Giulio Basso, Reinhold Scherer, Michael Taynnan Barros
{"title":"Embodied Biocomputing Sequential Circuits with Data Processing and Storage for Neurons-on-a-chip","authors":"Giulio Basso, Reinhold Scherer, Michael Taynnan Barros","doi":"arxiv-2408.07628","DOIUrl":null,"url":null,"abstract":"With conventional silicon-based computing approaching its physical and\nefficiency limits, biocomputing emerges as a promising alternative. This\napproach utilises biomaterials such as DNA and neurons as an interesting\nalternative to data processing and storage. This study explores the potential\nof neuronal biocomputing to rival silicon-based systems. We explore neuronal\nlogic gates and sequential circuits that mimic conventional computer\narchitectures. Through mathematical modelling, optimisation, and computer\nsimulation, we demonstrate the operational capabilities of neuronal sequential\ncircuits. These circuits include a neuronal NAND gate, SR Latch flip-flop, and\nD flip-flop memory units. Our approach involves manipulating neuron\ncommunication, synaptic conductance, spike buffers, neuron types, and specific\nneuronal network topology designs. The experiments demonstrate the practicality\nof encoding binary information using patterns of neuronal activity and\novercoming synchronization difficulties with neuronal buffers and inhibition\nstrategies. Our results confirm the effectiveness and scalability of neuronal\nlogic circuits, showing that they maintain a stable metabolic burden even in\ncomplex data storage configurations. Our study not only demonstrates the\nconcept of embodied biocomputing by manipulating neuronal properties for\ndigital signal processing but also establishes the foundation for cutting-edge\nbiocomputing technologies. Our designs open up possibilities for using neurons\nas energy-efficient computing solutions. These solutions have the potential to\nbecome an alternate to silicon-based systems by providing a carbon-neutral,\nbiologically feasible alternative.","PeriodicalId":501517,"journal":{"name":"arXiv - QuanBio - Neurons and Cognition","volume":"318 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-08-14","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"arXiv - QuanBio - Neurons and Cognition","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/arxiv-2408.07628","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
With conventional silicon-based computing approaching its physical and
efficiency limits, biocomputing emerges as a promising alternative. This
approach utilises biomaterials such as DNA and neurons as an interesting
alternative to data processing and storage. This study explores the potential
of neuronal biocomputing to rival silicon-based systems. We explore neuronal
logic gates and sequential circuits that mimic conventional computer
architectures. Through mathematical modelling, optimisation, and computer
simulation, we demonstrate the operational capabilities of neuronal sequential
circuits. These circuits include a neuronal NAND gate, SR Latch flip-flop, and
D flip-flop memory units. Our approach involves manipulating neuron
communication, synaptic conductance, spike buffers, neuron types, and specific
neuronal network topology designs. The experiments demonstrate the practicality
of encoding binary information using patterns of neuronal activity and
overcoming synchronization difficulties with neuronal buffers and inhibition
strategies. Our results confirm the effectiveness and scalability of neuronal
logic circuits, showing that they maintain a stable metabolic burden even in
complex data storage configurations. Our study not only demonstrates the
concept of embodied biocomputing by manipulating neuronal properties for
digital signal processing but also establishes the foundation for cutting-edge
biocomputing technologies. Our designs open up possibilities for using neurons
as energy-efficient computing solutions. These solutions have the potential to
become an alternate to silicon-based systems by providing a carbon-neutral,
biologically feasible alternative.
随着传统的硅基计算在物理和效率方面逐渐接近极限,生物计算成为一种前景广阔的替代方案。这种方法利用 DNA 和神经元等生物材料作为数据处理和存储的有趣替代方案。本研究探讨了神经元生物计算与硅基系统相媲美的潜力。我们探索了模仿传统计算机体系结构的神经元逻辑门和顺序电路。通过数学建模、优化和计算机模拟,我们展示了神经元序列电路的运行能力。这些电路包括神经元 NAND 门、SR Latch 触发器和 D 触发器存储单元。我们的方法包括操纵神经元通信、突触传导、尖峰缓冲器、神经元类型和特定的神经元网络拓扑设计。实验证明了利用神经元活动模式编码二进制信息以及利用神经元缓冲器和抑制策略克服同步困难的实用性。我们的研究结果证实了神经元逻辑电路的有效性和可扩展性,表明即使是不复杂的数据存储配置,它们也能保持稳定的代谢负担。我们的研究不仅证明了通过操纵神经元特性进行数字信号处理的嵌入式生物计算概念,还为尖端生物计算技术奠定了基础。我们的设计为使用神经元作为高能效计算解决方案提供了可能性。通过提供碳中和、生物可行的替代方案,这些解决方案有可能成为硅基系统的替代品。