Exploiting Multivariate LSTM Models with Multistep Price Forecasting for Agricultural Produce in Sri Lankan Context

Shriram Navaratnalingam, N. Kodagoda, Kushnara Suriyawansa
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Abstract

In Sri Lanka agricultural produces possess a large supply which involves various stakeholders and thus, fluctuation of the agricultural produce prices has a direct impact on the purchasing decisions of the consumer. So, the main purpose of this study is to address the problem faced by the consumer due to poor awareness of price fluctuation which consequently astonish the consumers and hinder them from making better purchasing decisions. The research study is being specially developed in a way to adapt the Sri Lankan agricultural consumer market that is mainly based on Pettah and Dambulla trade centers. As the study we exploited different types of LSTM model with multivariate inputs along with the different combination of multistep models. The result of the study reveals that better performance was obtained for the multivariate CNN LSTM model with encoder decoder multistep model which provided an average RMSE of 19.46 Sri Lankan rupees per kilogram with an average RMSPE of 14.9%. Also, study reveals a correlation between price fluctuation and standard days of the week, where a better prediction was obtained for Monday and Tuesday with an average RMSE of 17.2 and 17.7 Sri Lankan rupees per kilogram respectively with an average RMSPE of 12.2%. Based on the input timestep considered for model, though 14 days and 21 days provided a similar result with minor variation result reveals that 14 days provided a lesser standard deviation of 0.17 than 21 days standard deviation which is 0.98.
斯里兰卡农产品多步价格预测的多元LSTM模型研究
在斯里兰卡,农产品拥有大量的供应,涉及各种利益相关者,因此,农产品价格的波动对消费者的购买决策有直接影响。因此,本研究的主要目的是解决消费者由于对价格波动的认识不足而面临的问题,从而使消费者感到震惊,阻碍他们做出更好的购买决策。这项研究是专门为适应主要以佩塔和丹布拉贸易中心为基础的斯里兰卡农业消费市场而进行的。在研究中,我们利用了不同类型的多元输入LSTM模型以及不同的多步模型组合。研究结果表明,采用编码器-解码器多步模型的多元CNN LSTM模型获得了更好的性能,平均RMSE为19.46斯里兰卡卢比/公斤,平均RMSPE为14.9%。此外,研究揭示了价格波动与一周中的标准日之间的相关性,其中周一和周二的平均RMSE分别为17.2和17.7斯里兰卡卢比/公斤,平均RMSPE为12.2%,得到了更好的预测。基于模型考虑的输入时间步长,虽然14天和21天的结果相似,但变化较小,结果显示14天的标准差为0.17,小于21天的标准差为0.98。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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