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Regulating Cortical Neurodynamics for Past, Present and Future

机译:调节过去,现在和未来的皮质神经动力学

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摘要

Behaving systems, biological as well as artificial, need to respond quickly and accurately to changes in the environment. The response is dependent on stored memories, and novel situations should be learnt for the guidance of future behavior. A highly nonlinear system dynamics is required in order to cope with a complex and changing environment, and this dynamics should be regulated to match the demands of the current situation, and to predict future behavior. In many cases the dynamics should be regulated to minimize processing time. We use computer simulations of cortical structures in order to investigate how the neurodynamics of these systems can be regulated for optimal performance in an unknown and changing environment. In particular, we study how cortical oscillations can serve to amplify weak signals and sustain an input pattern for more accurate information processing, and how chaotic-like behavior could increase the sensitivity in initial, exploratory states. We mimic regulating mechanisms based on neuromodulators, intrinsic noise levels, and various synchronizing effects. We find optimal noise levels where system performance is maximized, and neuromodulatory strategies for an efficient pattern recognition, where the anticipatory state of the system plays an important role.
机译:行为系统,无论是生物系统还是人工系统,都需要对环境变化做出快速而准确的响应。响应取决于所存储的内存,应学习新颖的情况以指导将来的行为。为了应对复杂且不断变化的环境,需要高度非线性的系统动力学,并且应对此动力学进行调节以适应当前情况的需求并预测未来的行为。在许多情况下,应调节动态特性以最小化处理时间。为了研究如何在未知和多变的环境中调节系统的神经动力学,以获得最佳性能,我们使用了皮质结构的计算机模拟。特别是,我们研究了皮质振荡如何起到放大微弱信号并维持输入模式以进行更准确的信息处理的作用,以及类似混沌的行为如何增加初始探索状态下的灵敏度。我们模仿基于神经调节剂,固有噪声水平和各种同步效应的调节机制。我们发现了最佳噪声水平,其中系统性能得到了最大化,神经调制策略用于有效的模式识别,其中系统的预期状态起着重要的作用。

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