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Solving Constraint Satisfaction Problems Using the Loihi Spiking Neuromorphic Processor

机译:使用Loihi Spiking神经形态处理器解决约束满足问题

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In many cases, low power autonomous systems need to make decisions extremely efficiently. However, as a potential solution space becomes more complex, finding a solution quickly becomes nearly impossible using traditional computing methods. Thus, in this work we present a constraint satisfaction algorithm based on the principles of spiking neural networks. To demonstrate the validity of this algorithm, we have shown successful execution of the Boolean satisfiability problem (SAT) on the Intel Loihi spiking neuromorphic research processor. Power consumption in this spiking processor is due primarily to the propagation of spikes, which are the key drivers of data movement and processing. Thus, this system is inherently efficient for many types of problems. However, algorithms must be redesigned in a spiking neural network format to achieve the greatest efficiency gains. To the best of our knowledge, the work in this paper exhibits the first implementation of constraint satisfaction on a low power embedded neuromorphic processor. With this result, we aim to show that embedded spiking neuromorphic hardware is capable of executing general problem solving algorithms with great areal and computational efficiency.
机译:在许多情况下,低功耗自治系统需要非常有效地做出决策。但是,随着潜在解决方案空间变得越来越复杂,使用传统的计算方法来快速找到解决方案几乎变得不可能。因此,在这项工作中,我们提出了基于尖峰神经网络原理的约束满足算法。为了证明该算法的有效性,我们展示了在英特尔Loihi峰值神经形态研究处理器上成功执行布尔可满足性问题(SAT)。此尖峰处理器的功耗主要归因于尖峰的传播,而尖峰是数据移动和处理的关键驱动力。因此,该系统固有地对于许多类型的问题都是有效的。但是,必须以尖峰的神经网络格式重新设计算法,以实现最大的效率提升。据我们所知,本文的工作展示了在低功耗嵌入式神经形态处理器上首次实现约束满足。以此结果,我们旨在证明嵌入式尖峰神经形态硬件能够以较高的面积和计算效率执行通用的问题解决算法。

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