2015
DOI: 10.1007/978-3-319-13578-6
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Dynamics of Complex Autonomous Boolean Networks

Abstract: Network science provides a powerful framework for analyzing complex systems found in physics, biology, and social sciences. One way of studying the dynamics of networks is to engineer and measure them in the laboratory, which is particularly difficult with established approaches. In this thesis, I approach this problem using a hardware device with time-delay elements executing Boolean functions that can be connected to autonomous Boolean networks with chaotic, periodic, or excitable dynamics. I am able to make… Show more

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Cited by 24 publications
(24 citation statements)
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References 203 publications
(443 reference statements)
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“…Field-programmable gate arrays (FPGAs) are a type of programmable integrated circuit that can be used to synthesize large, experimental complex networks with arbitrary topologies, asynchronous (i.e., unclocked) update rules, and time-delay links. 26 Nodes of these experimental autonomous Boolean networks are built from asynchronous logic elements on the FPGA, which can be configured to perform arbitrary Boolean functions. By wiring a specific number of "delay elements" consisting of pairs of inverter gates in series, the finite rise and fall times of the logic elements can be exploited to create links with a specific amount of time delay.…”
Section: Experimental System and Resultsmentioning
confidence: 99%
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“…Field-programmable gate arrays (FPGAs) are a type of programmable integrated circuit that can be used to synthesize large, experimental complex networks with arbitrary topologies, asynchronous (i.e., unclocked) update rules, and time-delay links. 26 Nodes of these experimental autonomous Boolean networks are built from asynchronous logic elements on the FPGA, which can be configured to perform arbitrary Boolean functions. By wiring a specific number of "delay elements" consisting of pairs of inverter gates in series, the finite rise and fall times of the logic elements can be exploited to create links with a specific amount of time delay.…”
Section: Experimental System and Resultsmentioning
confidence: 99%
“…By wiring a specific number of "delay elements" consisting of pairs of inverter gates in series, the finite rise and fall times of the logic elements can be exploited to create links with a specific amount of time delay. 26,27 We use an Altera Cyclone IV FPGA to construct two paradigmatic network motifs-the toggle switch and the repressilator, which consist of two and three unidirectionally coupled inverters, respectively-and vary the amount of delay between each of the nodes to study the transient evolution of these systems to their stable states. The average delay of a single delay element on the Cyclone IV is experimentally measured to be 520 ps, though heterogeneity between logic elements due to chip architecture and manufacturing imperfections causes the possible delay to vary between 250 and 750 ps.…”
Section: Experimental System and Resultsmentioning
confidence: 99%
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“…Besides zero-lag synchronization, a state where all nodes undergo the same dynamics without a phase shift, group and cluster synchronization have received growing interest both in theory [Sorrentino and Ott, 2007;Kestler et al, 2007Kestler et al, , 2008Dahms et al, 2012;Kanter et al, 2011b,a;Golubitsky and Stewart, 2002;Lücken and Yanchuk, 2012;Sorrentino, 2014;Pecora et al, 2014;Poel et al, 2015] and in experiments [Illing et al, 2011;Aviad et al, 2012;Blaha et al, 2013;Williams et al, 2012Williams et al, , 2013aRosin, 2015]. In the case of group synchrony, the network consists of several groups where the nodes within one group are in zero-lag synchrony Dahms et al, 2012].…”
Section: Dynamics On Networkmentioning
confidence: 99%
“…Recently, more complex synchronization patterns, including cluster and group synchronization, have received growing interest both in theory [Sorrentino and Ott, 2007;Kestler et al, 2007;Ashwin et al, 2007;Kestler et al, 2008;Kori and Kuramoto, 2001;Lücken and Yanchuk, 2012;Dahms et al, 2012;Kanter et al, 2011b,a;Golubitsky and Stewart, 2002;Sorrentino, 2014;Pecora et al, 2014;Poel et al, 2015] and in experiments [Illing et al, 2011;Aviad et al, 2012;Blaha et al, 2013;Rosin et al, 2013;Williams et al, 2012Williams et al, , 2013aRosin, 2015]. These scenarios appear in many biological systems, examples include dynamics of nephrons [Mosekilde et al, 2002], central pattern generation in animal locomotion [Ijspeert, 2008], or population dynamics [Blasius et al, 1999].…”
Section: Cluster and Group Synchrony: The Theorymentioning
confidence: 99%