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Affine Neural Network-Based Predictive Control Applied to a Distributed Solar Collector Field

机译:基于仿射神经网络的预测控制在分布式太阳能集热器领域的应用

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This paper presents experimental results concerning the control of a distributed solar collector field, where the main objective concerns the regulation of the outlet oil temperature by suitably manipulating the oil flow rate. This is achieved by means of a constrained nonlinear adaptive model-based predictive control framework where the control action sequence is obtained by solving an open-loop optimization problem, subject to a set of constraints. The plant dynamics is approximated by an affine state-space neural network, whose complexity is specified in terms of the cardinality of dominant singular values associated with a subspace oblique projection of data-driven Hankel matrices. The neural network is first trained offline and subsequently improved through a recursive updating of its weights and biases, based on a dual unscented Kalman filter. The control scheme is implemented on the Acurex field of the Plataforma Solar de Almería, Spain. Results from these experiments demonstrate the feasibility of the proposed framework, and highlight the ability to cope with time-varying and unmodeled dynamics, under the form of disturbances, and its inherent capability for accommodating actuation faults.
机译:本文介绍了有关分布式太阳能集热器场控制的实验结果,其中主要目的是通过适当控制机油流量来调节出口机油温度。这是通过基于受约束的非线性自适应模型的预测控制框架来实现的,在该框架中,控制动作序列是通过解决开环优化问题而获得的,并受一组约束的约束。植物动态由一个仿射状态空间神经网络进行近似,其复杂性是根据与数据驱动汉克尔矩阵的子空间斜投影关联的优势奇异值的基数来指定的。首先,对神经网络进行离线训练,然后基于对偶的无味卡尔曼滤波器,通过递归更新其权重和偏差来对其进行改进。该控制方案在西班牙的Plataforma Solar deAlmería的Acurex现场实施。这些实验的结果证明了所提出框架的可行性,并强调了在扰动形式下应对时变和未建模动力学的能力,以及其适应致动故障的固有能力。

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