吕恩利, 蔡晋炜, 曾志雄, 等. 基于BPNN-PID控制策略的果蔬保鲜环境参数调控优化[J]. 华南农业大学学报, 2024, 45(1): 137-147. doi: 10.7671/j.issn.1001-411X.202207047
    引用本文: 吕恩利, 蔡晋炜, 曾志雄, 等. 基于BPNN-PID控制策略的果蔬保鲜环境参数调控优化[J]. 华南农业大学学报, 2024, 45(1): 137-147. doi: 10.7671/j.issn.1001-411X.202207047
    LÜ Enli, CAI Jinwei, ZENG Zhixiong, et al. Adjustment and improvement of environmental parameters for fruit and vegetable fresh-keeping based on BPNN-PID control strategy[J]. Journal of South China Agricultural University, 2024, 45(1): 137-147. doi: 10.7671/j.issn.1001-411X.202207047
    Citation: LÜ Enli, CAI Jinwei, ZENG Zhixiong, et al. Adjustment and improvement of environmental parameters for fruit and vegetable fresh-keeping based on BPNN-PID control strategy[J]. Journal of South China Agricultural University, 2024, 45(1): 137-147. doi: 10.7671/j.issn.1001-411X.202207047

    基于BPNN-PID控制策略的果蔬保鲜环境参数调控优化

    Adjustment and improvement of environmental parameters for fruit and vegetable fresh-keeping based on BPNN-PID control strategy

    • 摘要:
      目的 开发新的控制策略,用于解决传统控制方法果蔬保鲜环境参数因时变性、非线性、滞后性强和惯性大等特点导致的控制精度低、鲁棒性弱等问题。
      方法 将传统比例−积分−微分(Proportional-integral-derivative,PID)和BP神经网络(Back-propagation neural network,BPNN)算法相结合,开发一种基于BPNN-PID的控制策略,通过自主搭建的果蔬保鲜环境调控试验平台和自主设计的控制系统,研究不同控制策略对保鲜环境参数调控效果的影响。
      结果  基于BPNN-PID控制策略的果蔬保鲜环境控制系统,环境温度超调量为1.7 ℃、稳定时间为80 min、稳态误差为±0.2 ℃,环境相对湿度超调量为2.8%、稳定时间为55 min,相对湿度稳定维持在80%~90%范围内。与传统PID控制策略相比,BPNN-PID控制策略环境温度超调量减小了2.1 ℃、稳态误差减小了0.3 ℃、稳定时间缩短了25 min,环境相对湿度超调量减小了2.2%、稳定时间缩短了25 min,环境参数波动幅度均有所降低。
      结论 本文开发的果蔬保鲜环境控制系统呈现出良好的动态调整能力,具有较强的鲁棒性,控制性能明显提升,实现了保鲜环境参数的精准控制,满足果蔬保鲜贮藏要求。研究结果为果蔬保鲜环境参数调控提供了参考。

       

      Abstract:
      Objective The environmental parameters of fruit and vegetable preservation are characterized by time-varying, non-linear, strong hysteresis and large inertia, which leads to the problems of low control accuracy and weak robustness of traditional control methods. The goal was to develop a new control strategy to address these problems.
      Method We combined conventional proportional-integral-derivative (PID) and back-propagation neural network (BPNN) algorithms to develop a control strategy based on BPNN-PID. We studied the effect of using different control strategies on the regulation of freshness environment parameters through an independently built test platform for environmental regulation in fruit and vegetable preservation and an independently designed control system.
      Result The experimental results showed that the temperature overshoot of the environment control system based on BPNN-PID control strategy was 1.7 ℃, the stable time was 80 min, and the steady-state error was 0.2 ℃. The overshoot of environmental relative humidity was 2.8%, the stable time was 55 min, and it was stable in the range of 80%–90%. Compared with conventional PID control strategy, the ambient temperature overshoot of BPNN-PID control strategy was reduced by 2.1℃, the steady-state error was reduced by 0.3 ℃, and the steady-state time was shortened by 25 min. The environmental relative humidity overshoot was reduced by 2.2%, the stabilization time was shortened by 25 min, and the fluctuation ranges of environmental parameters were reduced.
      Conclusion The system shows good dynamic adjustment ability, strong robustness and obvious improvement in control performance, which enables accurate control of environmental parameters of fruit and vegetable preservation and meets the requirements of fruit and vegetable preservation and storage. The research results can provide references for the regulation of environmental parameters of fruit and vegetable preservation.

       

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