How human-robot collaboration impacts construction productivity: an agent-based multi-fidelity modeling approach
Minghui Wu, Jia-Rui Lin, Xin-Hao Zhang

TL;DR
This paper introduces an agent-based multi-fidelity modeling approach to simulate and evaluate how human-robot collaboration affects construction productivity, providing insights for optimizing collaborative strategies.
Contribution
It develops a novel multi-fidelity modeling framework to analyze complex HRC scenarios in construction, including the impact of proactive interaction and multiple robots.
Findings
Proposed approach effectively simulates complex HRC processes.
Lower Check Interval and higher Supplement Limit improve productivity with one robot.
Proactive interaction can increase productivity by up to 22%."],
Abstract
Though construction robots have drawn attention in research and practice for decades, human-robot collaboration (HRC) remains important to conduct complex construction tasks. Considering its complexity and uniqueness, it is still unclear how HRC process will impact construction productivity. To this end, an agent-based (AB) multi-fidelity modeling approach is introduced to simulate and evaluate how HRC influences construction productivity. A high-fidelity model is first proposed for a scenario with one robot. Then, a low-fidelity model is established to extract key parameters that capture the inner relationship among scenarios. The multi-fidelity models work together to simulate complex scenarios. Simulation and experiements show that: 1) the proposed approach is feasible and flexible for simulation of complex HRC processes, and can cover multiple collaboration and interaction modes; 2)…
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