Abstract
PurposeThe choice of a sales channel for fresh vegetables is an important decision a farmer can make. Typically, the farmers rely on their personal experience in directing the produce to a sales channel. This study examines how sales forecasting of fresh vegetables along multiple channels enables marginal and small-scale farmers to maximize their revenue by proportionately allocating the produce considering their short shelf life.Design/methodology/approachMachine learning models, namely long short-term memory (LSTM), convolution neural network (CNN) and traditional methods such as autoregressive integrated moving average (ARIMA) and weighted moving average (WMA) are developed and tested for demand forecasting of vegetables through three different channels, namely direct (Jaivasree), regulated (World market) and cooperative (Horticorp).FindingsThe results show that machine learning methods (LSTM/CNN) provide better forecasts for regulated (World market) and cooperative (Horticorp) channels, while traditional moving average yields a better result for direct (Jaivasree) channel where the sales volume is less as compared to the remaining two channels.Research limitations/implicationsThe price of vegetables is not considered as the government sets the base price for the vegetables.Originality/valueThe existing literature lacks models and approaches to predict the sales of fresh vegetables for marginal and small-scale farmers of developing economies like India. In this research, the authors forecast the sales of commonly used fresh vegetables for small-scale farmers of Kerala in India based on a set of 130 weekly time series data obtained from the Kerala Horticorp.
Subject
Economics and Econometrics,Agricultural and Biological Sciences (miscellaneous),Development
Reference50 articles.
1. Review on integrated management of brinjal shoots and fruit borer, Leucinodes orbonalis (Guenee);Journal of Entomology and Zoology Studies,2021
2. A hybrid seasonal autoregressive integrated moving average and quantile regression for daily food sales forecasting;International Journal of Production Economics,2015
3. Borovykh, A., Bohte, S. and Oosterlee, C.W. (2017), “Conditional time series forecasting with convolutional neural networks”, in Lecture Notes in Computer Science (Including Subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics), LNCS, Vol. 10614, pp. 729-730.
4. Application of machine learning techniques for supply chain demand forecasting;European Journal of Operational Research,2008
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
1. Menu Policy Analysis Based on Supermarket Income Preferences;Proceedings of the 5th International Conference on Computer Information and Big Data Applications;2024-04-26
2. Factors influencing market channels selection for small and marginal vegetable farmers in Kerala, India;International Journal of Value Chain Management;2024