Tutorial proposal efficient solving of optimization problems using advanced boolean satisfiability and Integer Linear Programming techniques

F. Aloul
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Abstract

Recent years have seen a tremendous growth in the number of research and development groups at universities, research labs, and companies that have started using Boolean Satisfiability (SAT) algorithms for solving different decision and optimization problems in Computer Science and Engineering. This has lead to the development of highly-efficient SAT solvers that have been successfully applied to solve a wide-range of problems in Electronic Design Automation (EDA), Artificial Intelligence (AI), Networking, Fault Tolerance, Security, and Scheduling. Examples of such problems include automatic test pattern generation for stuck-at faults (ATPG), formal verification of hardware and software, circuit delay computation, FPGA routing, power leakage minimization, power estimation, circuit placement, graph coloring, wireless communications, wavelength assignment, university classroom scheduling, and failure diagnosis in wireless sensor networks. SAT solvers have recently been extended to handle Pseudo-Boolean (PB) constraints which are linear inequalities with integer coefficients. This feature allowed SAT solvers to handle optimization problems, as opposed to only decision problems, and to be applied to a variety of new applications. Recent work has also showed that free open source SAT-based PB solvers can compete with the best generic Integer Linear Programming (ILP) commercial solvers such as CPLEX. This tutorial is aimed at introducing the latest advances in S AT technology. Specifically, we describe the simple new input format of SAT solvers and the common SAT algorithms used to solve decision/optimization problems. In addition, we highlight the use of SAT algorithms in solving a variety of EDA decision and optimization problems and compare its performance to generic ILP solvers. This should guide researchers in solving their existing optimization problems using the new SAT technology. Finally, we provide a prospective on future work on SAT.
教程建议使用高级布尔可满足性和整数线性规划技术有效地解决优化问题
近年来,在大学、研究实验室和公司中,开始使用布尔可满足性(SAT)算法来解决计算机科学与工程中的不同决策和优化问题的研究和开发小组的数量出现了巨大增长。这导致了高效SAT求解器的发展,这些求解器已成功地应用于解决电子设计自动化(EDA)、人工智能(AI)、网络、容错、安全和调度等领域的广泛问题。这些问题的例子包括自动测试模式生成卡在故障(ATPG),硬件和软件的形式化验证,电路延迟计算,FPGA路由,功率泄漏最小化,功率估计,电路放置,图形着色,无线通信,波长分配,大学课堂调度,以及无线传感器网络中的故障诊断。最近,SAT求解器被扩展到处理伪布尔(PB)约束,即具有整数系数的线性不等式。这个特性允许SAT求解器处理优化问题,而不仅仅是决策问题,并且可以应用于各种新的应用程序。最近的研究也表明,基于sat的免费开源PB求解器可以与最好的通用整数线性规划(ILP)商业求解器(如CPLEX)竞争。本教程旨在介绍S at技术的最新进展。具体来说,我们描述了SAT求解器的简单新输入格式和用于解决决策/优化问题的常见SAT算法。此外,我们强调了SAT算法在解决各种EDA决策和优化问题中的使用,并将其性能与通用ILP求解器进行了比较。这将指导研究人员利用新的SAT技术解决他们现有的优化问题。最后,对未来的研究进行了展望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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