Analyzing predictors of pearl millet supply chain using an artificial neural network

IF 1.8 Q3 MANAGEMENT Journal of Modelling in Management Pub Date : 2024-02-05 DOI:10.1108/jm2-09-2023-0202
Nikita Dhankar, Srikanta Routroy, Satyendra Kumar Sharma
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Abstract

Purpose

The internal (farmer-controlled) and external (non-farmer-controlled) factors affect crop yield. However, not a single study has identified and analyzed yield predictors in India using effective predictive models. Thus, this study aims to investigate how internal and external predictors impact pearl millet yield and Stover yield.

Design/methodology/approach

Descriptive analytics and artificial neural network are used to investigate the impact of predictors on pearl millet yield and Stover yield. From descriptive analytics, 473 valid responses were collected from semi-arid zone, and the predictors were categorized into internal and external factors. Multi-layer perceptron-neural network (MLP-NN) model was used in Statistical Package for the Social Sciences version 25 to model them.

Findings

The MLP-NN model reveals that rainfall has the highest normalized importance, followed by irrigation frequency, crop rotation frequency, fertilizers type and temperature. The model has an acceptable goodness of fit because the training and testing methods have average root mean square errors of 0.25 and 0.28, respectively. Also, the model has R2 values of 0.863 and 0.704, respectively, for both pearl millet and Stover yield.

Research limitations/implications

To the best of the authors’ knowledge, the current study is first of its kind related to impact of predictors of both internal and external factors on pearl millet yield and Stover yield.

Originality/value

The literature reveals that most studies have estimated crop yield using limited parameters and forecasting approaches. However, this research will examine the impact of various predictors such as internal and external of both yields. The outcomes of the study will help policymakers in developing strategies for stakeholders. The current work will improve pearl millet yield literature.

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利用人工神经网络分析珍珠小米供应链的预测因素
目的 内部(农民控制的)和外部(非农民控制的)因素都会影响作物产量。然而,还没有一项研究利用有效的预测模型确定和分析印度的产量预测因素。因此,本研究旨在调查内部和外部预测因素如何影响珍珠粟产量和秸秆产量。设计/方法/途径使用描述性分析和人工神经网络调查预测因素对珍珠粟产量和秸秆产量的影响。通过描述性分析,从半干旱地区收集了 473 个有效回答,并将预测因素分为内部因素和外部因素。研究结果 MLP-NN 模型显示,降雨的归一化重要性最高,其次是灌溉频率、轮作频率、肥料类型和温度。由于训练和测试方法的平均均方根误差分别为 0.25 和 0.28,因此该模型的拟合优度可以接受。研究局限性/意义 据作者所知,目前的研究是首次涉及内部和外部因素的预测因子对珍珠粟产量和秸秆产量的影响。然而,本研究将考察各种预测因素(如内部和外部因素)对两种产量的影响。研究结果将有助于决策者为利益相关者制定战略。目前的工作将改进珍珠粟产量文献。
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来源期刊
CiteScore
5.50
自引率
12.50%
发文量
52
期刊介绍: Journal of Modelling in Management (JM2) provides a forum for academics and researchers with a strong interest in business and management modelling. The journal analyses the conceptual antecedents and theoretical underpinnings leading to research modelling processes which derive useful consequences in terms of management science, business and management implementation and applications. JM2 is focused on the utilization of management data, which is amenable to research modelling processes, and welcomes academic papers that not only encompass the whole research process (from conceptualization to managerial implications) but also make explicit the individual links between ''antecedents and modelling'' (how to tackle certain problems) and ''modelling and consequences'' (how to apply the models and draw appropriate conclusions). The journal is particularly interested in innovative methodological and statistical modelling processes and those models that result in clear and justified managerial decisions. JM2 specifically promotes and supports research writing, that engages in an academically rigorous manner, in areas related to research modelling such as: A priori theorizing conceptual models, Artificial intelligence, machine learning, Association rule mining, clustering, feature selection, Business analytics: Descriptive, Predictive, and Prescriptive Analytics, Causal analytics: structural equation modeling, partial least squares modeling, Computable general equilibrium models, Computer-based models, Data mining, data analytics with big data, Decision support systems and business intelligence, Econometric models, Fuzzy logic modeling, Generalized linear models, Multi-attribute decision-making models, Non-linear models, Optimization, Simulation models, Statistical decision models, Statistical inference making and probabilistic modeling, Text mining, web mining, and visual analytics, Uncertainty-based reasoning models.
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