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首页> 外文期刊>Applied Soft Computing >Euglena-based neurocomputing with two-dimensional optical feedback on swimming cells in micro-aquariums
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Euglena-based neurocomputing with two-dimensional optical feedback on swimming cells in micro-aquariums

机译:基于Euglena的神经计算,对微型水族馆中的游泳细胞具有二维光学反馈

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We report on neurocomputing performed with real Euglena cells confined in micro-aquariums, on which two-dimensional optical feedback is applied using the Hopfield-Tank algorithm. Trace momentum, an index of swimming activity of Euglena cells, is used as the input/output signal for neurons in the neurocomputation. Feedback as blue-light illumination results in temporal changes in trace momentum according to the photophobic reactions of Euglena. Combinatorial optimization for a four-city traveling salesman problem is achieved with a high occupation ratio of the best solutions. Two characteristics of Euglena-based neurocomputing desirable for combinatorial optimization are elucidated: (1) attaining one of the best solutions to the problem, and (2) searching for a number of solutions via dynamic transition between the best solutions. Mechanisms responsible for the two characteristics are analyzed in terms of network energy, photoreaction ratio, and dynamics/statistics of Euglena movements. The spontaneous fluctuation in input/output signals and reduction in photoreaction ratio were found to be key factors in producing characteristic (1), while the photo-insensitive Euglena cells or the accidental evacuation of cells from non-illuminated areas causes characteristic (2). Furthermore, we show that the photophobic reactions of Euglena involves various survival strategies such as adaptation to blue-light or awakening from dormancy, which can extend the performance of Euglena-based neurocomputing toward deadlock avoidance or program-less adaptation. Finally, two approaches for achieving a high-speed Euglena-inspired Si-based computation are described.
机译:我们报告了用微型水族馆中的实际Euglena细胞进行的神经计算,其中使用Hopfield-Tank算法在其上应用了二维光学反馈。痕量动量是Euglena细胞游动活性的指标,被用作神经计算中神经元的输入/输出信号。作为蓝光照明的反馈会根据Euglena的憎光反应导致痕量动量的时间变化。最佳解决方案的高占有率可实现四城市旅行商问题的组合优化。阐明了组合优化所需的基于Euglena的神经计算的两个特征:(1)获得该问题的最佳解决方案之一,以及(2)通过最佳解决方案之间的动态转换来寻找许多解决方案。从网络能量,光反应率和Euglena运动的动力学/统计角度分析了负责这两个特征的机制。发现输入/输出信号的自发波动和光反应比的降低是产生特征的关键因素(1),而对光不敏感的Euglena细胞或细胞从非照明区域的意外疏散会导致特征(2)。此外,我们表明,裸藻的光化学反应涉及各种生存策略,例如适应蓝光或从休眠中唤醒,这可以将基于裸藻的神经计算的性能扩展为避免死锁或无程序适应。最后,描述了两种实现基于Euglena的高速Si基计算的方法。

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