Logistic Demands and Forecasting of Agriculture Cold Chain Serving Beijing, Tianjin and Hebei Province
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摘要: 采用定性分析和定量统计相结合的方法研究农产品冷链物流需求的影响因素,并在此基础上分别建立基于灰色模型、支持向量机、BP神经网络、RBF神经网络、遗传神经网络的农产品冷链物流需求预测模型。通过研究模型对变量之间相关关系的刻画能力及预测精度两方面因素,发现五类模型分析农产品冷链物流需求问题的能力排序为:遗传神经网络模型> RBF神经网络模型> BP神经网络模型>支持向量机模型>灰色模型,这一结果表明遗传神经网络用于农产品冷链物流需求分析具有优越性。Abstract: Understanding the demands on the logistics of an agricultural product cold chain is essential for appropriate planning, investment, and development of the system, which is unique and complex in operation. A specifically designed program is needed to accurately forecast the demands for an adequate and effective system management. This study applied a qualitative analysis and evaluated with statistical data on factors that might affect the logistics. Subsequently, forecasting models based on the grey model, support vector machine, BP neural network, RBF neural network, and genetic neural network were constructed. By challenging the models on the ability to characterize and correlate the variables as well as predict the outcomes, the following ranking was obtained:genetic neural network > RBF neural network > BP neural network > support vector machine > gray model.
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Key words:
- agricultural products /
- cold chain /
- logistic demand /
- genetic neural network /
- forecast /
- Beijing-Tianjin-Hebei
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表 1 2017-2020年各指标回归方程预测值
Table 1. Predicted values of various indicators for 2017-2020 by regression equations
年份 x1 x2 x3 x4 x5 x6 x7 x8 x9 x10 x11 x12 x13 x14 x15 x16 x17 2017 13851.25 105.10 33962.3 132076.2 79097.8 3875.2 27688.0 47412.0 22.72 430.37 11.98 35812.7 11435.6 3037.5 280295.0 7907.1 207.24 2018 14558.55 100.40 36592.5 140627.3 82134.5 3764.8 26765.0 51420.0 21.87 478.01 12.94 39587.4 11589.9 3133.2 270265.9 7604.5 221.81 2019 15400.24 110.30 39166.0 148934.8 84389.7 3562.7 25090.0 55477.0 21.31 532.29 13.95 43669.4 11744.1 3224.2 253574.1 6993.1 235.65 2020 16391.83 108.20 41658.2 156940.4 85757.2 3259.1 22584.0 59567.0 21.08 593.78 15.01 48072.2 11898.3 3309.7 229482.2 6036.3 248.53 表 2 遗传神经网络模型预测值
Table 2. Predicted values by genetic neural network model
年份 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 实际值/万t 2082.59 2154.31 2245.43 2283.14 2329.63 2349.46 2408.79 2447.18 2451.16 2525.59 2553.06 2549.41 2625.73 2690.59 2774.10 2836.86 2961.48 预测值/万t 2102.23 2167.82 2249.87 2283.75 2326.90 2346.61 2406.90 2446.16 2451.63 2526.13 2552.35 2546.20 2620.61 2682.27 2764.29 2808.68 2909.21 绝对误差 19.64 13.51 4.44 0.65 2.70 2.89 1.90 1.04 0.43 0.53 -0.75 3.20 5.09 8.33 9.81 28.22 22.29 绝对百分误差/% 0.94 0.63 0.20 0.03 0.12 0.12 0.08 0.04 0.02 0.02 0.03 0.13 0.19 0.31 0.35 0.99 0.75 表 3 样本内数据预测值
Table 3. Predicted values on sampled specimens
(单位/万t) 年份 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 实际值 2082.59 2154.31 2245.43 2283.14 2329.63 2349.46 2408.79 2447.18 2451.16 2525.59 2553.06 2549.41 2625.73 2690.59 2774.10 灰色模型预测值 2082.60 2176.87 2217.68 2259.25 2301.60 2344.75 2388.70 2433.48 2479.10 2525.57 2572.92 2621.15 2670.28 2720.39 2771.33 支持向量机预测值 2113.68 2177.42 2227.87 2279.63 2331.44 2373.57 2384.91 2443.48 2481. 4 6 2521.99 2549.55 2587.19 2629.28 2694.20 2762.66 BP神经网络预测值 2070.49 2157.62 2234.27 2275.97 2312.07 2349.98 2411.66 2434.87 2396.80 2488.50 2541.15 2557.52 2663.20 2671.24 2766.56 RBF神经网络预测值 2105.16 2160.69 2211.61 2268.97 2323.97 2377.98 2393.62 2447.38 2478.87 2522.72 2528.05 2569.53 2617.68 2690.02 2773.93 表 4 样本外数据预测值
Table 4. Predicted values on specimens not sampled
(单位/万t) 年份 2015 2016 2017 2018 2019 2020 灰色模型预测值 2823.28 2876.21 2930.12 2985.05 3041.01 3098.01 支持向量机预测值 2816.86 2861.32 2959.99 3055.90 3133.52 3243.62 BP神经网络预测值 2875.34 2920.65 2959.41 3024.11 3115.05 3195.22 RBF神经网络预测值 2869.00 2920.43 2997.98 3124.26 3198.42 3329.14 表 5 各类模型的预测误差
Table 5. Prediction errors of various models
年份 灰色模型 支持向量机 BP神经网络 RBF神经网络 绝对误差 相对百分误差/% 绝对误差 相对百分误差/% 绝对误差 相对百分误差/% 绝对误差 相对百分误差/% 2000 0.01 0.00 31.09 1.49 12.1 0.58 22.57 1.08 2001 22.56 1.05 23.11 1.07 3.31 0.15 6.38 0.30 2002 27.75 1.24 17.56 0.78 11.16 0.50 33.82 1.51 2003 23.85 1.04 3.47 0.15 7.13 0.31 14.13 0.62 2004 28.00 1.20 1.84 0.08 17.53 0.75 5.63 0.24 2005 4.75 0.20 24.07 1.02 0.48 0.02 28.48 1.21 2006 20.10 0.83 23.89 0.99 2.86 0.12 15.18 0.63 2007 13.72 0.56 3.72 0.15 12.33 0.50 0.18 0.01 2008 27.90 1.14 30.26 1.23 54.40 2.22 27.67 1.13 2009 0.03 0.00 3.61 0.14 37.10 1.47 2.88 0.11 2010 19.82 0.78 3.55 0.14 11.95 0.47 25.05 0.98 2011 71.75 2.81 37.79 1.48 8.12 0.32 20.13 0.79 2012 44.58 1.70 3.58 0.14 37.50 1.43 8.02 0.31 2013 29.79 1.11 3.6 0.13 19.36 0.72 0.58 0.02 2014 2.77 0.10 11.44 0.41 7.54 0.27 0.17 0.01 2015 13.62 0.48 20.04 0.71 38.44 1.36 32.1 1.13 2016 85.29 2.88 100.18 3.38 40.85 1.38 41.07 1.39 样本外误差均值 49.46 1.68 60.11 2.05 39.65 1.37 36.59 1.26 样本内误差均值 22.49 0.92 14.84 0.63 16.19 0.66 14.06 0.60 -
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