Tolerance estimation problems are prevailing in engineering applications. For example, in modern robotics, it remains challenging to efficiently estimate joint tolerance, \ie the maximal allowable deviation from a reference robot state such that safety constraints are still satisfied. This paper presented an efficient algorithm to estimate the joint tolerance using sum-of-squares programming. It is theoretically proved that the algorithm provides a tight lower bound of the joint tolerance. Extensive numerical studies demonstrate that the proposed method is computationally efficient and near optimal. The algorithm is implemented in the JTE toolbox and is available at \url{https://github.com/intelligent-control-lab/Sum-of-Square-Safety-Optimization}.
翻译:例如,在现代机器人中,有效估计联合容忍度仍是一项挑战,因为最大允许偏离参照机器人称的安全限制仍然得到满足。本文提出了一个有效的算法,用方程式总和来估计联合容忍度。理论上证明算法是联合容忍度的较紧的下限。广泛的数字研究表明,拟议的方法在计算上是有效的,而且接近最佳。算法在JTE工具箱中实施,可在以下网址查阅:\url{https://github.com/intelligent-control-lab/Sum-square-Safety-Optimi化}。