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Handling State and Output Constraints in MPC Using Time-dependent Weights

机译:使用时间相关权重处理MPC中的状态和输出约束

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摘要

A popular method for handling state and output constraints in a model predictive control (MPC) algorithm is to use 'soft constraints', in which penalty terms are added directly to the objective function. Improved closed loop performance can be obtained for plants with nonminimum phase zeros by modifying the MPC formulation to include suitably-designed time-dependent weights on the penalty terms associated with the state and output constraints. When the penalty terms are written in terms of the 'worst-case' l_∞-norm, incorporating the appropriate time dependence into the weights provides much better closed loop performance. The approach is illustrated using two multivariable plants with nonminimum phase transmission zeros, where the time-dependent weights cause the open loop predictions to coincide with closed loop predictions, which results in a reduction of output constraint violations.
机译:在模型预测控制(MPC)算法中处理状态和输出约束的一种流行方法是使用“软约束”,其中将惩罚项直接添加到目标函数中。通过将MPC公式修改为在与状态和输出约束相关的惩罚项上包括适当设计的时间相关权重,可以对具有非最小零相位的工厂获得改善的闭环性能。当惩罚项以“最坏情况”l_∞-范数的形式编写时,将适当的时间依赖性纳入权重可提供更好的闭环性能。使用具有非最小相位传输零的两个多变量工厂来说明该方法,其中与时间有关的权重导致开环预测与闭环预测一致,从而减少了输出约束冲突。

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