Abstract:Agricultural machinery spare parts are the foundation for the repair of agricultural machinery and are essential for timely maintenance of machinery failures and the normal operation of agricultural production. Therefore, accurate forecasting of the demand for agricultural machinery spare parts is crucial. However, the demand for agricultural machinery spare parts is characterized by non-stationarity, non-linearity, multiple zero values, and large fluctuations, making the prediction task challenging. A time-series efficient convolution network (TECNet) was proposed based on convolutional neural networks for predicting the demand of agricultural machinery spare parts. The model firstly extracted the periodicity of the original one-dimensional sequence by using fast Fourier transform, then a two-dimensional time series convolution module for feature extraction was constructed based on the periodicity, and finally the two-dimensional features back was reshaped to one-dimensional features and the predicted values were obtained by linear transformation. The sales data of four different spare part types from an agricultural machinery spare part supplier were used to evaluate and validate the model, and the root mean square scaling error was introduced as a measure to unify the prediction effect among different sequences. The findings from the experiment indicated that the predictive performance of the new model surpassed that of other comparative models. The root mean square errors for the projections of the four distinct spare parts-demand were 0.775, 1.349, 0.822, and 0.205, respectively, demonstrating a high degree of accuracy in predicting. The model was capable of analyzing the time-dependent relationships within time series data, effectively identifying nonlinear patterns. It performed well in predicting the demand for various agricultural machinery spare parts, offering valuable insights for the demand of predicting agricultural machinery spare parts.