陈啸, 王红英, 孔丹丹, 岳岩, 方鹏, 吕芳. 基于粒子群参数优化和BP神经网络的颗粒饲料质量预测模型[J]. 农业工程学报, 2016, 32(14): 306-314. DOI: 10.11975/j.issn.1002-6819.2016.14.041
    引用本文: 陈啸, 王红英, 孔丹丹, 岳岩, 方鹏, 吕芳. 基于粒子群参数优化和BP神经网络的颗粒饲料质量预测模型[J]. 农业工程学报, 2016, 32(14): 306-314. DOI: 10.11975/j.issn.1002-6819.2016.14.041
    Chen Xiao, Wang Hongying, Kong Dandan, Yue Yan, Fang Peng, Lü Fang. Quality prediction model of pellet feed basing on BP network using PSO parameters optimization method[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2016, 32(14): 306-314. DOI: 10.11975/j.issn.1002-6819.2016.14.041
    Citation: Chen Xiao, Wang Hongying, Kong Dandan, Yue Yan, Fang Peng, Lü Fang. Quality prediction model of pellet feed basing on BP network using PSO parameters optimization method[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2016, 32(14): 306-314. DOI: 10.11975/j.issn.1002-6819.2016.14.041

    基于粒子群参数优化和BP神经网络的颗粒饲料质量预测模型

    Quality prediction model of pellet feed basing on BP network using PSO parameters optimization method

    • 摘要: 针对颗粒饲料产品受配方原料、加工参数变化而带来的质量波动问题,提出了一种以误差反向传播算法神经网络(back-propagation neural network,BPNN)为核心,平均影响值法(mean impact value,MIV)为数据预处理方法,粒子群算法(particle swarm optimization,PSO)为关键参数优化算法的颗粒饲料质量预测模型。基于面向实际建立的输入输出指标体系,使用实地采集的颗粒饲料生产数据对模型进行训练和测试,测试结果显示实际值与模型预测值呈显著正相关,决定系数R2均在0.94以上;平均绝对误差、平均绝对百分比误差及均方根误差显示预测精度达到较高水平,各误差平均值依次达到0.442、2.185%和0.5481。以多元线性回归模型及基本BPNN模型预测结果对比可以发现,MIV-PSO-BPNN预测模型预测性能有显著提升,各输出误差优化幅度从39.55%~91.80%不等,平均优化幅度分别达到84.99%和56.95%;同时相对误差变化趋势图显示MIV-PSO-BPNN预测模型具有更优的预测稳定性,相对误差极值差降幅均值达91.46%。该研究为颗粒饲料质量控制提出了一种新思路,可为饲料行业高效低耗生产提供理论依据。

       

      Abstract: Abstract: For a large number of advantages such as better palatability, high return, and avoiding automatic grading, pellet has been one of the major application forms of animal feed. Aiming at the fluctuation of pellet feed quality due to the change of diet content and processing parameters, a prediction model was proposed in this article to provide assistance for quality and cost control in feed industry. In this research, back propagation neural network (BPNN) was designed as the core for the proposed model considering its advantages such as unique abilities of self-organizing, self-learning and self-adaptation. For the purpose of improvement of data utilization efficiency, mean impact value (MIV) method was combined in this model as data preprocessing technique for its concise and rapid feature in data processing. As for several crucial structural parameters within BPNN model, particle swarm optimization (PSO) algorithm was applied for better performance since its advantages of simple structure, easy realization, fast search speed, etc. Meanwhile, these 2 methods were chosen to cooperate with BPNN algorithm for their preferable collaborating properties among various mathematical models according to literatures. Based on index system of inputs and outputs which met practical requirement of industry, the dataset for the model included diet content and processing parameters as input and powder content, productivity and pellet durability index (PDI) as output, which were collected from actual feed production processing in a feed mill in Beijing in the period of March-December, 2015. And the model structures including neuron number of hidden layers and proportion of dataset for different purposes were established by pre-test method/literature experience. After trained and tested by collected data, the MIV-PSO-BPNN prediction model was established and showed fairly good performance in following aspects. Analyzing the fitting optimal linear regression curve of predicted value produced from the proposed model and true value from the collected data, it showed that there was a significant positive relationship between these 2 values with determination coefficient of 0.9692, 0.9421 and 0.9465 for powder content, productivity and PDI, respectively. Meanwhile, the fitting curve presented a highly coincident relation with the line of y=x, which meant predicted value was very close to true value. Also, high prediction performance of MIV-PSO-BPNN prediction model was verified based on mean absolute error (MAE), mean absolute percentage error (MAPE) and root mean square error (RMSE). In order to compare predict function, the multi-linear regression method and basic BPNN model were established with the same dataset for training and test. Results showed that MIV-PSO-BP prediction model possessed a fairly high promotion in prediction function compared to multi-linear regression method for its unique adaption quality to non-linear properties of feed processing which was attributed to the advantage of BPNN model as the core. Particularly, the average falling range of MAE, MAPE and RMSE value for production rate, PDI and powder content reached about 90.77%, 86.36% and 77.85%, respectively. On the other hand, compared to basic BPNN model, the average optimization range of error index of powder content, PDI and production rate for MIV-PSO-BP prediction model reached 43.85%, 68.93% and 58.08% respectively. So, the MIV-PSO-BPNN prediction model possessed a better forecast stability, which was indicated by the changing tendency of relative error for each output and its curve being more stable and smooth while there was several significant peaks and beats in the other. Statistically, the average decreasing of extreme value difference of relative error for 3 outputs reached 91.46%. The proposition of this model provides a novel thought for feed industry as well as the theoretical reference and practical tool for production and quality control of pellet feed with high efficiency and low consumption. However, there are several problems that need to be solved. Parts of parameters such as initial threshold and weight of BPNN as well as random value in PSO updating process are determined randomly, which may cause precision dissatisfaction of users and requires more time for model run. In following research, targeted measure should be taken for initial parameter assignment to make this model provide better service for relative practitioners.

       

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