ROSep 16, 2016

Resource-Performance Trade-off Analysis for Mobile Robot Design

arXiv:1609.04888v33 citations
AI Analysis

This work addresses resource constraints in mobile robot design for robotics engineers, offering a systematic approach to optimize trade-offs, though it is incremental as it builds on existing verification techniques.

The paper tackles the challenge of designing mobile autonomous robots with limited on-board resources by providing a framework to explore resource-performance trade-offs, using a quantitative multi-objective verification technique to generate Pareto fronts and automatically produce correct-by-construction schedules, demonstrated in simulations and experiments with encouraging results.

The design of mobile autonomous robots is challenging due to the limited on-board resources such as processing power and energy. A promising approach is to generate intelligent schedules that reduce the resource consumption while maintaining best performance, or more interestingly, to trade off reduced resource consumption for a slightly lower but still acceptable level of performance. In this paper, we provide a framework to aid designers in exploring such resource-performance trade-offs and finding schedules for mobile robots, guided by questions such as "what is the minimum resource budget required to achieve a given level of performance?" The framework is based on a quantitative multi-objective verification technique which, for a collection of possibly conflicting objectives, produces the Pareto front that contains all the optimal trade-offs that are achievable. The designer then selects a specific Pareto point based on the resource constraints and desired performance level, and a correct-by-construction schedule that meets those constraints is automatically generated. We demonstrate the efficacy of this framework on several robotic scenarios in both simulations and experiments with encouraging results.

Foundations

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