Quantum Grid Path Planning Using Parallel QAOA Circuits Based on Minimum Energy Principle

arXiv:2510.07413v1
Originality Incremental advance
AI Analysis

This addresses the bottleneck of classical path planning for NP problems in the NISQ era, offering a domain-specific incremental improvement.

The study tackled grid path planning by mapping it to a minimum quantum energy state problem and using parallel QAOA circuits with a classical filter to increase the probability of finding optimal solutions, achieving significant advantages over serial circuits even with minimal circuit layers.

To overcome the bottleneck of classical path planning schemes in solving NP problems and address the predicament faced by current mainstream quantum path planning frameworks in the Noisy Intermediate-Scale Quantum (NISQ) era, this study attempts to construct a quantum path planning solution based on parallel Quantum Approximate Optimization Algorithm (QAOA) architecture. Specifically, the grid path planning problem is mapped to the problem of finding the minimum quantum energy state. Two parallel QAOA circuits are built to simultaneously execute two solution processes, namely connectivity energy calculation and path energy calculation. A classical algorithm is employed to filter out unreasonable solutions of connectivity energy, and finally, the approximate optimal solution to the path planning problem is obtained by merging the calculation results of the two parallel circuits. The research findings indicate that by setting appropriate filter parameters, quantum states corresponding to position points with extremely low occurrence probabilities can be effectively filtered out, thereby increasing the probability of obtaining the target quantum state. Even when the circuit layer number p is only 1, the theoretical solution of the optimal path coding combination can still be found by leveraging the critical role of the filter. Compared with serial circuits, parallel circuits exhibit a significant advantage, as they can find the optimal feasible path coding combination with the highest probability.

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