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Application of an Autocovariance Least - Squares Method for Model Predictive Control of Hybrid Ventilation in Livestock Stables

机译:自协方差最小二乘法在畜牧混合通风模型预测控制中的应用。

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In this paper, the implementation of a new Auto-covariance Least-Square (ALS) technique for livestock hybrid ventilation systems and associated indoor climate with a Model Predictive Control (MPC) strategy is presented. The design is based on thermal comfort parameters for poultry in barns and a combined dynamic model describing the entire system knowledge. Reference offset-free tracking is achieved using target calculation and quadratic programming and adding a disturbance model that accommodates unmeasured disturbances entering through the process input. The unknown noise covariances are diagnosed and corrected by applying the ALS estimator with the closed loop process data. The comparative simulations show the performance improvement with the ALS estimator in the presence of disturbances and moderate amount of error in the model parameters. The results demonstrate the high potential of ALS methods in improving the best practice of process control and estimation.
机译:在本文中,提出了一种新的自协方差最小二乘(ALS)技术与模型预测控制(MPC)策略的实施,该技术用于牲畜混合通风系统和相关的室内气候。该设计基于谷仓中家禽的热舒适性参数和描述整个系统知识的组合动态模型。使用目标计算和二次编程并添加一个干扰模型来实现无参考偏移的跟踪,该模型可容纳通过过程输入进入的未测干扰。通过将ALS估计器与闭环过程数据一起应用,可以诊断和纠正未知的噪声协方差。对比仿真表明,在模型参数存在干扰和适度误差的情况下,使用ALS估计器可以提高性能。结果表明,ALS方法在改进过程控制和估计的最佳实践方面具有很大的潜力。

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