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Price Prediction for Agricultural Commodities in Bandung Regency Based on Functional Link Neural Network and Artifical Bee Colony Algorithms

机译:基于功能链接神经网络和人工蜂群算法的万隆摄政区农产品价格预测

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摘要

In Indonesia, fluctuating agricultural commodity prices often impacts society negatively. In this study, farmers in Bandung Regency, West Java, Indonesia, were chosen as a case study. Fluctuating agricultural commodity prices can lead to farmers suffering losses due to the sale price being smaller or equal to the cost of planting. Price is influenced by crop productivity, while planting productivity is strongly influenced by weather. A system is developed in this study to predict the price of agricultural commodities based on price, productivity and weather history using a Functional Link Neural Network (FLNN) algorithm optimized with the Artificial Bee Colony (ABC) algorithm. The price prediction results can be used as recommendations for farmers as to whether they should plant or not. In addition, the prediction results are compared to the Artificial Neural Network (ANN) algorithm with Backpropagation algorithm as the learning algorithm. From the experimental result, the best Mean Absolute Percentage Error (MAPE) value was obtained with FLNN-ABC: 7.68% for the predicted price of chili and 10.59% for the predicted price of onion.
机译:在印度尼西亚,农产品价格的波动通常会对社会造成负面影响。在本研究中,选择了印度尼西亚西爪哇省万隆摄政区的农民作为案例研究。农产品价格的波动会导致农民遭受损失,这是因为销售价格低于或等于种植成本。价格受作物生产力的影响,而种植生产力受天气的影响很大。本研究中开发了一种系统,该系统使用功能链接神经网络(FLNN)算法优化了基于人工蜂群(ABC)算法的价格,生产力和天气历史,从而预测农产品价格。价格预测结果可以作为农民是否应该种植的建议。此外,将预测结果与以反向传播算法作为学习算法的人工神经网络(ANN)算法进行了比较。根据实验结果,使用FLNN-ABC获得了最佳的平均绝对百分误差(MAPE)值:辣椒的预测价格为7.68%,洋葱的预测价格为10.59%。

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