Liu Tianyu, Wu Yu, Ye An, Cao Lei, Cao Yongnian
School of Information Engineering, Shanghai Maritime University, Shanghai, China.
Tiktok Incorporation, San Jose, CA, United States.
Front Hum Neurosci. 2024 May 22;18:1400077. doi: 10.3389/fnhum.2024.1400077. eCollection 2024.
Channel selection has become the pivotal issue affecting the widespread application of non-invasive brain-computer interface systems in the real world. However, constructing suitable multi-objective problem models alongside effective search strategies stands out as a critical factor that impacts the performance of multi-objective channel selection algorithms. This paper presents a two-stage sparse multi-objective evolutionary algorithm (TS-MOEA) to address channel selection problems in brain-computer interface systems.
In TS-MOEA, a two-stage framework, which consists of the early and late stages, is adopted to prevent the algorithm from stagnating. Furthermore, The two stages concentrate on different multi-objective problem models, thereby balancing convergence and population diversity in TS-MOEA. Inspired by the sparsity of the correlation matrix of channels, a sparse initialization operator, which uses a domain-knowledge-based score assignment strategy for decision variables, is introduced to generate the initial population. Moreover, a -based mutation operator is utilized to enhance the search efficiency of TS-MOEA.
The performance of TS-MOEA and five other state-of-the-art multi-objective algorithms has been evaluated using a 62-channel EEG-based brain-computer interface system for fatigue detection tasks, and the results demonstrated the effectiveness of TS-MOEA.
The proposed two-stage framework can help TS-MOEA escape stagnation and facilitate a balance between diversity and convergence. Integrating the sparsity of the correlation matrix of channels and the problem-domain knowledge can effectively reduce the computational complexity of TS-MOEA while enhancing its optimization efficiency.
通道选择已成为影响非侵入式脑机接口系统在现实世界中广泛应用的关键问题。然而,构建合适的多目标问题模型以及有效的搜索策略是影响多目标通道选择算法性能的关键因素。本文提出了一种两阶段稀疏多目标进化算法(TS-MOEA)来解决脑机接口系统中的通道选择问题。
在TS-MOEA中,采用了一个由早期和晚期阶段组成的两阶段框架来防止算法停滞。此外,这两个阶段专注于不同的多目标问题模型,从而在TS-MOEA中平衡收敛性和种群多样性。受通道相关矩阵稀疏性的启发,引入了一种稀疏初始化算子,该算子对决策变量使用基于领域知识的得分分配策略来生成初始种群。此外,利用基于的变异算子来提高TS-MOEA的搜索效率。
使用基于62通道脑电图的脑机接口系统对疲劳检测任务评估了TS-MOEA和其他五种最先进的多目标算法的性能,结果证明了TS-MOEA的有效性。
所提出的两阶段框架可以帮助TS-MOEA避免停滞,并促进多样性和收敛性之间的平衡。整合通道相关矩阵的稀疏性和问题领域知识可以有效降低TS-MOEA的计算复杂度,同时提高其优化效率。