Ergonomics and human comfort are essential concerns in physical human-robot interaction applications. Defining an accurate and easy-to-use ergonomic assessment model stands as an important step in providing feedback for postural correction to improve operator health and comfort. Common practical methods in the area suffer from inaccurate ergonomics models in performing postural optimization. In order to retain assessment quality, while improving computational considerations, we propose a novel framework for postural assessment and optimization for ergonomically intelligent physical human-robot interaction. We introduce DULA and DEBA, differentiable and continuous ergonomics models learned to replicate the popular and scientifically validated RULA and REBA assessments with more than 99% accuracy. We show that DULA and DEBA provide assessment comparable to RULA and REBA while providing computational benefits when being used in postural optimization. We evaluate our framework through human and simulation experiments. We highlight DULA and DEBA's strength in a demonstration of postural optimization for a simulated pHRI task.
翻译:为了保持评估质量,在改善计算考虑的同时,我们提出一个新的框架,用于对人体-机器人物理-机器人互动的假设评估和优化。我们引入了DULA和DEBA, 不同和连续的人类工程学模型,以99%的精确度复制经过科学验证的RULA和REBA评估。我们表明,DULA和DEBA提供了与RULA和REBA相类似的评估,同时在利用RULA和REBA时提供了计算效益。我们通过人类和模拟实验评估我们的框架。我们强调DULA和DEBA的力量,以示范模拟的PHRI任务。