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ORIGINAL RESEARCH article

Front. Sustain. Food Syst., 24 May 2024
Sec. Crop Biology and Sustainability

A new concept in assessing adaptability index for superior potential cropping intensity in early-maturing rice

Muhammad Fuad Anshori
Muhammad Fuad Anshori1*Yunus MusaYunus Musa1Muh FaridMuh Farid1Muh JayadiMuh Jayadi2Abd Haris BahrunAbd Haris Bahrun1Amir YassiAmir Yassi1Andi Amran SulaimanAndi Amran Sulaiman3Yi Cheng HuangYi Cheng Huang4Madonna CasimeroMadonna Casimero5Lizzida LlorcaLizzida Llorca5Willy Bayuardi SuwarnoWilly Bayuardi Suwarno6Muh Mukhtadir PutraMuh Mukhtadir Putra7Hasil SembiringHasil Sembiring8Bambang Sapta PurwokoBambang Sapta Purwoko6Daniel O. WasongaDaniel O. Wasonga9Mahmoud F. SeleimanMahmoud F. Seleiman10
  • 1Department of Agronomy, Hasanuddin University, Makassar, Indonesia
  • 2Department of Soil Science, Faculty of Agriculture, Hasanuddin University, Makassar, Indonesia
  • 3Department of Agribusiness, Faculty of Agriculture, Hasanuddin University, Makassar, Indonesia
  • 4Taiwan International Cooperation and Development Fund (TaiwanICDF), Taipei, Taiwan
  • 5International Rice Research Institute, University of the Philippines Los Baños, Los Baños, Philippines
  • 6Department of Agronomy and Horticulture, Faculty of Agriculture, IPB University, Bogor, Indonesia
  • 7Agrotechnology Study Program, University of West Sulawesi, Majene, Indonesia
  • 8Research Center for Food Crops, Research Organization for Agriculture and Food, National Research and Innovation Agency, Cibinong, Indonesia
  • 9Department of Crop Sciences, University of Illinois Urbana-Champaign, Urbana, IL, United States
  • 10Plant Production Department, College of Food and Agriculture Sciences, King Saud University, Riyadh, Saudi Arabia

Implementing a cropping intensity program with rice cultivation four times a year (CI 400) can be achieved using early maturing varieties of rice. However, this development needs to pay attention to the adaptability of the varieties planted to ensure successful implementation. The adaptability approach is a combination of assessing stability and productivity potential. This concept has been developed and applied in several studies, including research on rice. However, this approach is considered less comprehensive because it is non-parametric and only focuses on one stability analysis. Therefore, a systematic integration of various stability analyses, including index methods, is needed to comprehensively assess adaptability, particularly for early-maturing rice in South Sulawesi. This region is characterized by a dynamic climate zone and is one of the top four highest rice producers in Indonesia. Meanwhile, this study aims to develop a comprehensive adaptability index and select the best early-maturing rice varieties, especially in South Sulawesi. The investigation was conducted in Bone, Soppeng, and Gowa over two seasons using a nested randomized complete block design, with organized replications in each environment (location-season). Additionally, there was a significant focus on the application of five early-maturing and two check rice varieties, with each factor repeated three times at each location, totaling 126 experimental units. The results showed that the adaptability index, by combining stability rank accumulation with yield min max standardization, was effective at assessing the yield potential and stability of early-maturing rice varieties in supporting CI 400. Inpari 13 had the best index value at 0.55, followed by Cakrabuana at 0.31; hence both were recommended as adaptive early-maturing rice varieties, especially in South Sulawesi.

1 Introduction

The enhancement of rice production is essential to sustainability and food security programs in many parts of Asia, including Indonesia, the fourth most populous country globally (Rozaki, 2020a,b). Despite the significant production of rice (Yuan et al., 2022; Bin Rahman and Zhang, 2023), domestic demands have not been met, leading to a rise in importation alongside population growth (Rozaki, 2020b; Hutapea et al., 2022; Fitrawaty et al., 2023). Land conversion and climate change further worsen the challenges faced in reducing rice production (Rumanti et al., 2018; Vogel et al., 2019; Fan et al., 2021). Addressing these issues requires planned and systematic efforts to innovate rice production methods, which are crucial for maintaining food security.

Optimization of production locations and intensification systems offers a pathway to increase rice production in Indonesia. Among the five locations with high rice production potential, South Sulawesi needs to be optimized (Octania, 2021) because the population of inhabitants exceeds the production level compared to proportions observed in East, Central, and West Java, as well as South Sumatra (Paiman et al., 2022). South Sulawesi has unique agroclimatic conditions featuring three distinct rain zone patterns divided into west, east, and transitional locations (Herniwati and Kadir, 2009; Yassi et al., 2023). Such diverse rain patterns offer opportunities for production sustainability enhancement, thereby suggesting this province as an ideal location for evaluating and optimizing agricultural intensification programs.

The development of potential rice varieties, particularly early-maturing types, presents an efficient and effective genetic solution as an optimization effort to increase production amid climate change challenges (Acquaah, 2012; Syukur et al., 2015). Early-maturing varieties, often requiring less than 100 days to be fully grown (Yun, 2023), promote greater yield by escaping extreme global warming conditions through resilience both in the dry and rainy seasons (Rohaeni and Ishaq, 2015; Ren et al., 2023). These varieties are suitable for the government program of CI 300 and CI 400 implementation (Supriatna, 2012; Sudana, 2016; Subekti and Umar, 2022), which aims to maximize planting frequency to three times and four times per year (Musa et al., 2023; Widiastuti et al., 2023). The program facilitates higher land use for consistently increased production in the face of rice field erosion. Several early-maturing varieties released by the Ministry of Agriculture include Inpari 13, Inpari 19, Cakrabuana, and Padjajaran (Barokah et al., 2021; Subekti and Umar, 2022), along with M70D registered by some private companies (Palobo et al., 2019). However, the potential of varieties remains underexplored in South Sulawesi, a province promising substantial rice development. This highlights the need for comprehensive assessment through a variety of stability and adaptability tests.

The stability test is a fundamental aspect of developing rice genotypes or varieties in a location (Reckling et al., 2021). This enables the exploration of potential interactions among varieties, environments, and growing seasons through systematic statistical analysis (Oladosu et al., 2017; Reckling et al., 2021; Pour-Aboughadareh et al., 2022). Previously, Jaruchai et al. (2018), Al-kordy et al. (2019), Sitaresmi et al. (2019), Akbar et al. (2021), Rawte et al. (2021), Aswidinnoor et al. (2023), and Lee et al. (2023) conducted stability analysis on potential rice strains. These stability analyses are focused on the approach of comparing a genotype to the population average at a particular location. This concept is continually being developed, both parametrically and non-parametrically, and is adapted to field cases, thereby increasing the accuracy level of interpretation (Pour-Aboughadareh et al., 2022). However, the general concepts used in this analysis were independent with a lack of quantitative synchronization, showing the need for optimization through an index-based method. Cinelli et al. (2021) stated that index development and ranking offered effective means of decision-making based on various criteria. Greveniotis et al. (2023), Lee et al. (2023), and Utami et al. (2023) reported the use of the index in stability analysis for rice and fava beans, respectively. These indices use several approaches, such as the yield stability index (YSI), which focuses on a semi-objective assessment of the importance of the Shukla stability analysis (Kang, 1993). Another approach is the additive main effects and multiplicative interaction (AMMI) stability index (ASI), which assesses genotypes based on the interaction between genotype eigenvalues on PC1 and PC2 in the AMMI analysis (Jambhulkar et al., 2014). However, index development should not only focus on plant stability potential but also consider yield aspects, both of which could be achieved through the adaptability index method.

The adaptability index is an assessment approach that combines the yield potential of a genotype with its special trait’s potential (Anshori et al., 2021), including the potential for stability. According to Deng et al. (2023) and Rahimi and Debnath (2023), index-based variety assessment is more comprehensive than relying solely on independent stability analysis. This shows that assessing adaptability is a solution to see the potential performance of a genotype in several locations. The development of adaptability concept based on stability was pioneered by Kang (1993), who combined the potential stability of Sukhla with the productivity of the tested genotypes. In addition, Farshadfar (2008) and Utami et al. (2023) also used an assessment of adaptation potential by combining AMMI and productivity ranking. However, both index concepts are only based on a non-parametric approach and focus on one stability approach. This is considered less effective in describing the adaptation potential of a genotype, so optimizing the development of a more complex adaptation index through a combination of various approaches to stability and productivity performance needs to be carried out. Optimization of adaptability index development seems to be a viable strategy for assessing the potential of early-maturing rice varieties in South Sulawesi. Therefore, this study aims to develop a comprehensive adaptability index in assessing the potential of early-maturing rice varieties and identify the best varieties to support the CI 400 program in South Sulawesi, a location with significant opportunities for rice development.

2 Materials and methods

This study was conducted in three mapped districts based on climatological zones and production potential. Tangke Bajeng Village, Gowa Regency, represents the climatological zone for the west coast with coordinates 5°18′3.020″ S, 119°26′30.833″ E. Meanwhile, the east coast climatological zone comprised Pajekko, Bone Regency, with coordinates 4°36′30.971″ S, 120°17′41.633″ E and Lalabata, Soppeng Regency, with coordinates 4°20′44.693″ S, 119°54′54.029″ E. These three were selected based on the potential for rice production in South Sulawesi, and all exploration activities were performed in two growing seasons from January to April 2022 (the 1st season) and June–September 2022 (the 2nd season), with the rainfall pattern rhythm of the locations depicted in Figure 1.

Figure 1
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Figure 1. The rainfall pattern on all locations of this study (2022 year).

2.1 Experimental design

This study used a nested randomized complete block design, with organized replications in six environments consisting of three locations × two seasons. Five early-maturing varieties, including Padjajaran, Cakrabuana, Inpari 13, Inpari 19, and M70D, as well as two check varieties comprising Ciherang and Inpari 32, were tested in each environment. Subsequently, each factor was repeated three times at each location, generating 126 experimental units. The selection of the five early maturing rice varieties was based on recommendations from the Ministry of Agriculture regarding their maturity and productivity potential in several regions, especially on Java Island (Barokah et al., 2021; Subekti and Umar, 2022). However, the potential comparison in South Sulawesi has not been studied, so the study of the five varieties was carried out as a preliminary study. Meanwhile, the selection of the Ciherang and Inpari 32 varieties as a comparison was based on the high demand for seeds of these two varieties in South Sulawesi (Sitaresmi et al., 2023; Qadir et al., 2024).

2.2 Research procedure

The procedure in this study started with land processing into mud form through plowing and ponding, followed by mapping adjustment to the number of experimental units in one environment. The plot size was determined using a meter of 3.5 m × 3.5 m, with a 1-m gap between replicates. Simultaneously, the seed-sowing process was conducted by inducing sprouts for 2 × 24 h before sowing in the seedbed. After 15 days, the seedlings were transferred to the field with a spacing of 20 cm × 20 cm, resulting in 416 plants per plot, and were maintained according to the method by Anshori et al. (2019).

Rice maintenance activities included replanting, weeding, irrigation, fertilization, and pest management. Replanting was performed 7 days after planting to replace dead seedlings and adjust varieties, with weeding conducted mechanically and chemically after 30 days. The mechanical process required removing weeds around the plant, and the chemical process was carried out by spraying herbicides using a sprayer. Irrigation was initiated 20 days after transplanting (6 days following initial fertilization) by pouring water into the experimental field until the height reached ±5 cm above the soil surface. This activity was stopped during the second fertilization, allowing the soil to reach wetness similar to clay. Irrigation was resumed 5 days after fertilization, and during the primordial phase, water levels were raised to ±10 cm from the soil surface to suppress the growth of new tillers. NPK fertilizer was applied at a ratio of 200 kg N:100 kg P2O5:100 kg K2O after 14 days of planting, and the second stage of fertilization used urea after 35 days.

Pest and disease management were performed in the morning by sprinkling and spraying molluscicide chemicals. This process was adjusted to pests or pathogens attacking rice plants according to the respective phenological phase. Finally, harvesting was conducted manually using a sickle to collect ripe grains into sacks when 2/3 of the panicle had entered the physiological maturity phase (yellowing straw) and rice grains at the panicle base were hardened. During harvesting, data were obtained by observing the plant parts before inclusion in the sample bag.

2.3 Observation parameters and data analysis

The examination of data in this study focused on yield characteristics and started with an ANOVA, followed by stability and heritability tests. The stability test used the Finlay and Wilkinson (1963); Eberhart and Russell (1966), Kang, and AMMI plot methods with PBSTAT software (Sitaresmi et al., 2019; Aswidinnoor et al., 2023). The selection of the stability approach was based on the intersection of several commonly used research reports and a combination of representative non-parametric and parametric approaches (Sitaresmi et al., 2019; Pour-Aboughadareh et al., 2022). Stability test results were continued with the stability rank index (SRI), derived from a combination of rankings from each stability analysis. SRI applied the min-max standardization (SRIMMS ) method to combine ranking data from all stability analyses or the sum of stability rank (SSR). Next, SRIMMS was combined with a yield that has been standardized to develop an it is the adaptability index. The formula of this SRI_MMS and Adaptability Index was as follows:

S R I M M S = S R I i S R I min S R I max S R I min     (1)
Adaptability Index = S R I M M S Y i Y min Y max Y min     (2)
where, S R I i  = sum rank of the i object, S R I min  = the lowest sum rank, S R I max  = the highest sum rank, Y i  = mean value of the object i, Y min  = the lowest mean value, and Y max  = the highest mean value. Moreover, the adaptability index was developed based on two concepts, namely, per season and year, which were both differentiated by yield value used. The seasonal adaptability index was derived from the average yield, while the adaptability index per year incorporated yield based on the annual potential cropping index. This adaptability index per year was closely related to the harvest age of the genotypes tested. The index analysis results served as a comparison in determining the best early-maturing varieties for South Sulawesi. Finally, to increase the accuracy of assessing the potential of early-maturing rice varieties, the stability ranking index, adaptation index per season, and adaptation index per year were also linked to 3D plot mapping via Rstudio version 2024.04.0 + 735 with the scatterplot3d package. Meanwhile, the overall flow of this study methodology is shown in Figure 2.
Figure 2
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Figure 2. Flowchart of this study methodology.

3 Results

Table 1 shows the results of variety testing at several locations in two seasons in 2022. Each of the seasons, locations, and varieties factors as well as the interactions between seasons-locations, varieties-seasons, varieties-locations, and varieties-seasons-locations significantly affected yield. This phenomenon suggested that diverse local varieties had various interaction dynamics in the same and different seasons. The dynamic variations necessitated the systematic analysis of the performance of early-maturing rice varieties in each environment based on interactions between environments and seasons.

Table 1
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Table 1. ANOVA of generated yield vs. seasons, locations, and varieties.

The yield of early-maturing rice varieties against locations and seasons is presented in Table 2. Bone planting locations in the first season showed the highest average yield compared to other environments. However, the lowest average yield was observed in the Gowa district in the first season. Different seasons had various impacts on yield, as the first growing season was relatively better than the second in the Gowa and Soppeng districts. The Gowa district recorded the highest yield in the second growing season. Additionally, Inpari 32 was a variety with the best yield performance compared to other rice types. The M70D had the lowest yield, but in some locations, this variety and Inpari 19 produced a similar result. Moreover, all locations showed high heritability with a value greater than 50%, particularly, the Bone location recorded the highest heritability.

Table 2
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Table 2. Average yield per location and combination.

The results of the Finlay–Wilkinson, Eberhart–Russel, and Kang stability analysis are shown in Table 3. Through the evaluation performed using the Finlay–Wilkinson method, all varieties and the comparators had average stable yield, except for the Padjajaran early maturing rice variety (bi  = 0.7). In contrast, based on Eberhart–Russell’s deviation from regression (s2di) parameter, all varieties were considered to have unstable yield. Kang’s stability method showed that Inpari 32 (YSi = 2) was deemed to have the best stability rating, followed by Ciherang (YSi = 1) and Inpari 13 (YSi = −1).

Table 3
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Table 3. The yield stability testing based on Finlay–Wilkinson, Eberhart–Russel, and Kang’s analysis.

According to Figure 3, the Additive Main Effects and Multiplicative Interaction (AMMI) analysis results are presented in two-dimensional forms. Gowa 1, Soppeng 2, and Soppeng 1 were found to be relatively stable compared to other environments. Based on varietal potential, Inpari 13 was the only genotype in the stability circle, followed by Ciherang and Inpari 19 varieties. Meanwhile, the specific variety with low AMMI stability was observed in the Padjajaran location.

Figure 3
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Figure 3. AMMI analysis of early-maturing rice varieties stability (PC, Principal component).

The results of the entire stability analysis were converted into SRI and Adaptability Index, as shown in Table 4. The Padjajaaran variety (0.75) had the highest SRI, followed by Cakrabuana (0.5) and Inpari 32 (0.5), while Inpari 13 (0.29) had the lowest SRI. The highest adaptability index belonged to Inpari 32 (0.5), followed by Ciherang (0.44) and Inpari 13 (0.14), while the lowest was generated by the M70D variety (−0.41).

Table 4
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Table 4. Adaptability index for several rice varieties.

The potential harvesting age of each genotype was presented in Table 5, showing that Inpari 32 (116.0 days) had the longest harvesting age, followed by Ciherang (108.8 days). In contrast, the M70D variety (91.3 days) was the slowest, followed by Inpari 19 (93.1 days). These age results were converted into the harvest index, where M70D had an optimal CI 400 potential. Other varieties, such as Cakrabuana, Inpari 13, Inpari 19, and Padjajaran, had CI 400 potential under the growing condition of the seedling system. Meanwhile, the Padjajaran variety showed the most significant projected annual production potential, with a value of 28.24 tons per ha, and the Ciherang variety presented the lowest value at 23.37.

Table 5
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Table 5. Projected yield per year for some early-maturing rice varieties.

The results of the interaction between SRI_MMS and yield per year formed the annual adaptability index, as presented in Table 6. Varieties with a positive annual adaptability index included Cakrabuana (0.31), Inpari 13 (0.55), and Padjajaran (0.25). In contrast, M70 D (−1.27), Inpari 32 (−0.38), Inpari 19 (−0.43), and Ciherang (−0.46) had negative adaptability index values. Meanwhile, based on the adaptation relationship (Figure 4), Cakrabuana and Inpari 13 are in the same group with good potential on all three indices [SRI, Adaptability Index per Season (AIS), and Adaptability Index per Year (AIY)]. Inpari 32 and Ciherang are in the same group with good SRI and AIS potential. The Padjajaran variety is in a separate group with good SRI and AIY potential. The M70D variety also has good SRI potential. On the other hand, Inpari 19 is also grouped alone with low potential on these three indices.

Table 6
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Table 6. Adaptability index per year for some early-maturing rice varieties.

Figure 4
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Figure 4. Adaptability relationship among stability rank index, adaptability index per season, and adaptability index per year.

4 Discussion

The results of the multi-site analysis showed significant differences between locations and seasons due to the disparities in rainfall patterns and agroecosystems, which varied between locations, particularly Gowa (Figure 1). The location of Gowa has a climatological profile contrasting with that of the Bone and Soppeng districts. According to Gérardeaux et al. (2021) and Rezvi et al. (2023), differences in rain patterns greatly determine the potential for crop production, especially rice as a C3 crop. Rice requires a high amount of water with sufficient light levels (Materu et al., 2018; Mallareddy et al., 2023). These optimal conditions can support rice production potential. On the other hand, if water conditions are lacking or sunlight is less intense, then the production potential will not be optimal or tends to be much different from the potential yield of the variety (Mallareddy et al., 2023; Loaiza et al., 2024). Especially for early-maturing rice varieties, the distribution pattern of water adequacy in these varieties is very important because they have a period of rapid change from phase to phase (Yun et al., 2023), so the influence of the seasons and their interactions on the variety will be very large in early-maturing rice varieties. Furthermore, differences in soil conditions, especially in the Gowa area compared to the Bone and Soppeng areas, cause significant differences between environments. The land used for planting in Bajeng, Gowa Regency, contains sedimentary or alluvial soil near the coast, while Soppeng and Gowa are situated close to the mountains. These differences made all interactions significantly affect the response of early-maturing rice yield. A real interaction would influence the specific potential of variety in the growing environment, including both the location and season (Satoto et al., 2016; Oladosu et al., 2017; Sharifi et al., 2017; Krishnamurthy et al., 2021; Senguttuvel et al., 2021). This served as evidence that the current study conducted a deeper analysis of the potential stability of optimal early-maturing rice yield.

The potential of Bone Regency for rice production was highly recommended during the evaluation process. This was observed from the average yield potential and yield heritability per location. Determining yield heritability per location is very important in assessing the potential of a location as part of the experimental environment. Generally, higher heritability promotes the evaluation process accuracy in assessing the potential of variety (Tal, 2012; Khan et al., 2022; Zaid et al., 2022), including the interaction made with the environment. Therefore, Bone Regency was optimally recommended as a suitable environment for testing rice yield potential in South Sulawesi, specifically on the east coast.

The results showed that the Inpari 32 variety had the highest yield potential in most locations, followed by Ciherang. These results were reported by both Agustian et al. (2022) and Qadir et al. (2024). Inpari 32 and Ciherang were found to be relatively long-lived with a more extensive phenotype than early-maturing rice varieties. This difference was observed by Musa et al. (2023) during fertilizer dose evaluation in early-maturing varieties and by Aswidinnoor et al. (2023) while testing new rice types in Indonesia. In general, rice age is primarily assessed with the vegetative phase (Paiman et al., 2022; Sheng et al., 2022; Afa et al., 2023). The vegetative phase determines the potential photosynthetic area of plants (Hidayati et al., 2016; Paiman et al., 2022), leading to low yield among plants with shortages. However, under certain conditions, the potential of these early-maturing varieties can be optimized with specific interactions manifested. This study identified that the potential yield of early-maturing varieties in some locations nearly exceeded the potential yield of Inpari 32 and Ciherang. Early-maturing rice varieties with high potential values were Padjajaran, followed by Inpari 13. Additionally, the potential yield of the Padjajaran variety was reported by Surdianto et al. (2021), Syafruddin et al. (2023), and Musa et al. (2023). Based on this, stability and specific interactions of the yield of early-maturing rice varieties were tested.

The variety stability test in this study used several dynamic methods to assess the response of all examined genotypes. This aims to strengthen the determination of variety stability levels because each method has unique advantages and specifications complementing one another (Oladosu et al., 2017; Jaruchai et al., 2018; Pour-Aboughadareh et al., 2022; Lee et al., 2023). The Finlay–Wilkinson and Eberhart–Russel methods are an essential combination in estimating genotype dynamic stability through the regression response of each object and error on the regression line (Satoto et al., 2016; Jaruchai et al., 2018; Sitaresmi et al., 2019; Aswidinnoor et al., 2023). This suggests that stable genotypes respond linearly to changes in the environment, and the changes have a strong precision level characterized by a slight error deviation of the regression line. Varieties M70D, Inpari 13, Cakrabuana, and Inpari 19 were genotypes considered relatively stable from the combination. However, in the Eberhart–Russell analysis, the values of the four varieties were declared unstable. These four had standard error values compared to the check varieties Inpari 32 and Ciherang; hence, M70D, Inpari 13, Cakrabuana, and Inpari 19 were described as early-maturing varieties with good stability based on the combination. The potential of the four varieties was affirmed by the Kang and AMMI methods, which identified Inpari 13 as a stable variety with good yield potential. This assessment is supported by the Kang stability value, which is close to positive compared to other early-maturing varieties. Kang’s method offers the advantage of providing a rough or subjective midpoint between stability and yield (Sitaresmi et al., 2019; Pour-Aboughadareh et al., 2022).

The AMMI method also reinforces the stability evaluation concept by using the principal component analysis (PCA) to partition the genetic–environment interaction (GEI) diversity into simpler dimensions while retaining most of the original diversity (Adjebeng-Danquah et al., 2017; Sharifi et al., 2017; Sitaresmi et al., 2019; Pour-Aboughadareh et al., 2022). This is enhanced by using the biplot method to visualize simplified interaction dimensions (Sharifi et al., 2017; Senguttuvel et al., 2021; Pour-Aboughadareh et al., 2022), facilitating the identification of genotype stability based on the central axis coordinates. Inpari 13 was found as the only variety with coordinates close to the central axis, suggesting that it had stability toward the compaction of diversity and decomposition of interactions in all environments. Meanwhile, the Padjajaran variety showed environment-specific potential in Gowa during the second season, making it recommended for cultivation in Gowa. This study identified Inpari 13 as the most stable early-maturing variety, and the conducted analysis was further refined objectively through the adaptability index value.

Adaptability index development in this study focused on ranking and min-max standardization to improve the classification of potential combinations of stability and yield (Cinelli et al., 2021; Shantal et al., 2023). The use of this index serves as a midpoint for combining data of different natures, as demonstrated in this study. The stability index is an accumulation of rankings from several stability analysis approaches, resulting in non-parametric data (Pour-Aboughadareh et al., 2022; Utami et al., 2023). Meanwhile, the resulting data are continuous and parametric (Pour-Aboughadareh et al., 2022). The combination of these two data needs to be bridged by looking at the potential max-min limits. This standardization will produce a data range of 0–1, allowing for the combination of the two (Cinelli et al., 2021; Shantal et al., 2023). The effectiveness of using min-max standardization for crop evaluation was reported by Blüthgen et al. (2006), Farid et al. (2020), and Noel et al. (2021), hence this systematic method was implemented in the adaptability index development.

The results also showed that Inpari 13 was an early-maturing rice variety with a good adaptability index per season. This index was less than the values obtained for Inpari 32 and Ciherang. The Cakrabuana variety could be categorized as good despite possessing a negative adaptability index. The index value of standardization close to 0 suggests that the response of a genotype is near the general average (Peternelli et al., 2017; Anshori et al., 2021; Rawte et al., 2021), making it worthy of consideration in the selection process. In contrast, the Padjajaran variety had a low adaptability index value. In this study, the adaptability index method provided a reasonably objective penalty for genotypes that were not consistent with stability and yield potential. The adaptability index is effective in dynamically assessing genotype stability and yield potential, but it needs to be developed based on the cropping index.

Based on plant age evaluation, all early-maturing rice can be optimized for planting four times per year through a program known as Cropping Intensity (CI) 400, while the check varieties are limited to 2–3 seasons. This showed that the annual yield of the check varieties Inpari 32 and Ciherang was less than optimal despite possessing a good adaptability index per season. Early-maturing varieties can increase yield potential to exceed the value observed among the two comparators through the CI 400 program. Most of these varieties require an abducted seedling system or seedling before harvest to reach CI 400, except for M70D, which often matures very early (Palobo et al., 2019). Due to the adaptability index manifested in one season, M70D is classified as highly non-adaptive and dependent on environmental conditions. These characteristics were reflected by the high yield observed during the first season in the Bone location, while the lowest was recorded in the second season, suggesting the unsuitability of M70D for the CI 400 system, specifically on a repetitive basis. The ineffectiveness of M70D was further reflected by the negative adaptability index per year found in this variety, along with Inpari 19 and the two comparators, namely Inpari 32 and Ciherang. Inpari 13, Cakrabuana, and Padjajaran were varieties with a positive annual adaptability index, supporting the recommendation of Inpari 13 and Cakrabuana for the CI 400 planting system in South Sulawesi. Additionally, Padjajaran had good potential and responsive traits, leading to the suitability of this variety for specific environmental requirements, such as in the Gowa location. This result is also supported by Musa et al. (2023), where the Cakrabuana and Inpari 13 varieties have good consistency in responding to NPK fertilization in the Bone and Gowa environmental interactions. This phenomenon indicates that planting early-maturing rice varieties such as Inpari 13 and Cakrabuana can be widely carried out under random nutritional conditions, especially in two climate zones in South Sulawesi. The use of these two varieties will correlate with the stability of farmer income. Areas with optimal water potential per year will be in accordance with the CI 400 program, where Inpari 13 and Cakrabuana are the main varieties. Meanwhile, rainfed land still has the potential to plant 1–2 times per year, which can be optimized to 2–3 times per year by utilizing the early maturing varieties Inpari 13 and Cakrabuana (Sulaiman et al., 2019; Oue and Laban, 2020). However, this research still needs to be studied extensively considering the limitations of covering the data and analysis process in this research.

The limitations of this research are closely related to three aspects. The first aspect is the wide diversity of genotypes tested. The genotypes used in this research are still limited to early-maturing rice varieties that have been released by the Indonesian government. The use of other genotypes, whether from the breeding process, results of exploration, or introduction, can be used as material for wider studies. However, the potential of these five varieties could be the first step in developing an adaptation index to support the CI 400 program. The second aspect of limitation is the development of other climate patterns in South Sulawesi, where the development of this concept has not yet reached the transition climate area. It is possible that the transition climate has a different response pattern from the two climate patterns in this study. However, this pattern will not have a drastic impact because water availability in the transition area is sufficient throughout the year (Yassi et al., 2023), so research focuses more on the two western and eastern climate zones. In addition, the two zones in this study can be a general representation of several regions outside Sulawesi where climate patterns are relatively similar. The third limitation is the development of stability analysis that does not yet include machine learning concepts. The development of machine learning analysis has become a development that is widely used in various fields (Kobler and Ademic, 2000; Chang and Lin, 2011; Pham et al., 2017; Guo et al., 2021, 2022, 2023). This potential analysis requires more precise data with wider dimensions so that the accuracy of the assessment can be better (Guo et al., 2021, 2022, 2023). This can be used as reference material in the future to analyze the concept of stability more precisely, including in assessing the adaptation potential of early-maturing rice varieties. However, the analytical concept in this research has become a sufficient initial basis for overcoming the problem of assessing the adaptability of early-maturing rice varieties. Therefore, the results of this research, both from the analysis concept and determining the adaptability of varieties, can be a reference and recommendation for sustainable early maturing rice cultivation.

5 Conclusion

In conclusion, this study identified the use of several climatological zone-based environments in South Sulawesi to be very effective in assessing the potential stability of early-maturing rice varieties. Moreover, the assessment of adaptability achieved through the index method, derived from a combination of various stability analyses, could serve as a reference in evaluating the potential yield and stability of early-maturing rice varieties, both per season and year. Inpari 13 and Cakrabuana are recommended as stable and adaptive early-maturing rice varieties suitable for the CI 400 program. The Padjajaran variety showed potential adaptability, but it exhibited specificity for certain locations, particularly in Gowa Regency. Therefore, these three varieties needed broader investigation, specifically in the transitional climatological zone of South Sulawesi.

Resource identification initiative: the project uses STAR 2.0.1 from IRRI, PBStat 3.1, and Excel Office 2016 version for varieties resources from the rice seed market in Indonesia.

Data availability statement

The raw data supporting the conclusions of this article will be made available by the authors, without undue reservation.

Author contributions

MA: Writing – review & editing, Writing – original draft, Validation, Software, Methodology, Investigation, Formal Analysis, Conceptualization. YM: Writing – review & editing, Validation, Supervision, Conceptualization. MF: Writing – review & editing, Methodology, Investigation. MJ: Writing – review & editing, Methodology, Investigation. AB: Writing – review & editing, Methodology, Investigation. AY: Writing – review & editing, Methodology, Investigation. AS: Writing – review & editing, Resources, Funding acquisition. YH: Writing – review & editing, Resources, Funding acquisition, Conceptualization. MC: Writing – review & editing, Supervision, Resources, Conceptualization. LL: Writing – review & editing, Supervision. WS: Writing – review & editing, Writing – original draft, Visualization, Software, Formal Analysis. MP: Writing – review & editing, Methodology, Investigation. HS: Writing – review & editing, Supervision, Resources. BP: Writing – review & editing, Data curation. DW: Writing – review & editing, Funding acquisition. MS: Writing – review & editing, Validation, Funding acquisition.

Funding

The author(s) declare that financial support was received for the research, authorship, and/or publication of this article. Funding for this study was provided by Researchers Supporting Project number (RSPD2024R751) from King Saud University, Riyadh, Saudi Arabia, and The International Collaboration Research (Icore) 2023–2024 scheme (grant number: 04966/UN4.22/PT.01/0.03/2023) involving Hasanuddin University, the International Cooperation and Development Fund (ICDF) in Taiwan, and the International Rice Research Institute, over a period of 3 years (2022–2024).

Acknowledgments

We thank the Researchers Supporting Project number (RSPD2024R751) from King Saud University, Riyadh, Saudi Arabia, for developing and supporting this manuscript. We are grateful to the Ministry of Education, Culture, Research, and Technology of the Republic of Indonesia, the International Cooperation and Development Fund (ICDF) in Taiwan, and the International Rice Research Institute for funding this study during two seasons through the scheme of International Collaboration Research (Icore) 2023 (grant number: 04966/UN4.22/PT.01.03/2023). Furthermore, we also thank Hasanuddin University’s publication management center for providing facilities, such as training workshops, and Enago for proofreading this article.

Conflict of interest

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Publisher's note

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Keywords: adaptability index, Oryza sativa , rice yield, tropical region, stability analysis

Citation: Anshori MF, Musa Y, Farid M, Jayadi M, Bahrun AH, Yassi A, Sulaiman AA, Huang YC, Casimero M, Llorca L, Suwarno WB, Putra MM, Sembiring H, Purwoko BS, Wasonga DO and Seleiman MF (2024) A new concept in assessing adaptability index for superior potential cropping intensity in early-maturing rice. Front. Sustain. Food Syst. 8:1407880. doi: 10.3389/fsufs.2024.1407880

Received: 27 March 2024; Accepted: 07 May 2024;
Published: 24 May 2024.

Edited by:

Matteo Balderacchi, Independent researcher, Piacenza, Italy

Reviewed by:

Yheni Dwiningsih, University of Arkansas, United States
Yahui Guo, Central China Normal University, China

Copyright © 2024 Anshori, Musa, Farid, Jayadi, Bahrun, Yassi, Sulaiman, Huang, Casimero, Llorca, Suwarno, Putra, Sembiring, Purwoko, Wasonga and Seleiman. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

*Correspondence: Muhammad Fuad Anshori, fuad.anshori@unhas.ac.id

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