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Reach-SDP: Reachability Analysis of Closed-Loop Systems with Neural Network Controllers via Semidefinite Programming

机译:REACH-SDP:通过SEMIDEFINITE编程与神经网络控制器闭环系统的可达性分析

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There has been an increasing interest in using neural networks in closed-loop control systems to improve performance and reduce computational costs for on-line implementation. However, providing safety and stability guarantees for these systems is challenging due to the nonlinear and compositional structure of neural networks. In this paper, we propose a novel forward reachability analysis method for the safety verification of linear time-varying systems with neural networks in feedback interconnection. Our technical approach relies on abstracting the nonlinear activation functions by quadratic constraints, which leads to an outer-approximation of forward reachable sets of the closed-loop system. We show that we can compute these approximate reachable sets using semidefinite programming. We illustrate our method in a quadrotor example, in which we first approximate a nonlinear model predictive controller via a deep neural network and then apply our analysis tool to certify finite-time reachability and constraint satisfaction of the closed-loop system.
机译:在闭环控制系统中使用神经网络越来越兴趣,以提高性能并降低在线实现的计算成本。然而,由于神经网络的非线性和组成结构,为这些系统提供安全性和稳定性的保证是挑战性的。在本文中,我们提出了一种新的前向可达性分析方法,用于在反馈互连中具有神经网络的线性时变系统的安全验证。我们的技术方法依赖于二次约束摘要非线性激活功能,这导致闭环系统的前向可达组的外近似。我们表明我们可以使用SEMIDEFINITE编程计算这些近似可达组。我们在四足功能乐电池示例中说明了我们的方法,其中我们首先通过深神经网络近似非线性模型预测控制器,然后应用我们的分析工具来证明闭环系统的有限时间可达性和约束满足。

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