TL;DR
This paper presents a scalable, high-performance software framework for detailed biophysical simulations of the human neuromuscular system, enabling realistic modeling of surface EMG signals and muscle contractions.
Contribution
It introduces a novel multi-scale, multi-physics simulation framework with advanced parallelization techniques and algorithms, significantly improving computational efficiency and resolution.
Findings
Achieved several hundred times speedup over baseline methods
Enabled simulation of muscle with hundreds of thousands of fibers
Revealed effects only observable at high resolution
Abstract
The human neuromuscular system consisting of skeletal muscles and neural circuits is a complex system that is not yet fully understood. Surface electromyography (EMG) can be used to study muscle behavior from the outside. Computer simulations with detailed biophysical models provide a non-invasive tool to interpret EMG signals and gain new insights into the system. The numerical solution of such multi-scale models imposes high computational work loads, which restricts their application to short simulation time spans or coarse resolutions. We tackled this challenge by providing scalable software employing instruction-level and task-level parallelism, suitable numerical methods and efficient data handling. We implemented a comprehensive, state-of-the-art, multi-scale multi-physics model framework that can simulate surface EMG signals and muscle contraction as a result of neuromuscular…
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