570 research outputs found

    Routing Physarum with electrical flow/current

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    Plasmodium stage of Physarum polycephalum behaves as a distributed dynamical pattern formation mechanism who's foraging and migration is influenced by local stimuli from a wide range of attractants and repellents. Complex protoplasmic tube network structures are formed as a result, which serve as efficient `circuits' by which nutrients are distributed to all parts of the organism. We investigate whether this `bottom-up' circuit routing method may be harnessed in a controllable manner as a possible alternative to conventional template-based circuit design. We interfaced the plasmodium of Physarum polycephalum to the planar surface of the spatially represented computing device, (Mills' Extended Analog Computer, or EAC), implemented as a sheet of analog computing material whose behaviour is input and read by a regular 5x5 array of electrodes. We presented a pattern of current distribution to the array and found that we were able to select the directional migration of the plasmodium growth front by exploiting plasmodium electro-taxis towards current sinks. We utilised this directional guidance phenomenon to route the plasmodium across its habitat and were able to guide the migration around obstacles represented by repellent current sources. We replicated these findings in a collective particle model of Physarum polycephalum which suggests further methods to orient, route, confine and release the plasmodium using spatial patterns of current sources and sinks. These findings demonstrate proof of concept in the low-level dynamical routing for biologically implemented circuit design

    Using SRAM Based FPGAs for Power-Aware High Performance Wireless Sensor Networks

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    While for years traditional wireless sensor nodes have been based on ultra-low power microcontrollers with sufficient but limited computing power, the complexity and number of tasks of today’s applications are constantly increasing. Increasing the node duty cycle is not feasible in all cases, so in many cases more computing power is required. This extra computing power may be achieved by either more powerful microcontrollers, though more power consumption or, in general, any solution capable of accelerating task execution. At this point, the use of hardware based, and in particular FPGA solutions, might appear as a candidate technology, since though power use is higher compared with lower power devices, execution time is reduced, so energy could be reduced overall. In order to demonstrate this, an innovative WSN node architecture is proposed. This architecture is based on a high performance high capacity state-of-the-art FPGA, which combines the advantages of the intrinsic acceleration provided by the parallelism of hardware devices, the use of partial reconfiguration capabilities, as well as a careful power-aware management system, to show that energy savings for certain higher-end applications can be achieved. Finally, comprehensive tests have been done to validate the platform in terms of performance and power consumption, to proof that better energy efficiency compared to processor based solutions can be achieved, for instance, when encryption is imposed by the application requirements

    Single Chip Solution with1-Wire Communication Protocol to Interface Digital Transducers to Sensor Networks

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    A virtual laboratory application setup is used to control and monitorremotely the operation of several sensor nodes placed at different geographicallocations. In this paper, we present the design of a generalized, low-cost and reconfigurablesmart sensor node using a Zigbee with a Field-Programmable Gate Array(FPGA) that embeds all processing and communication functionalities based on theIEEE 1451 family of standards with communication taking place through a 1-wireprotocol. The architecture of the sensor node is based on the single chip concept thatincludes communication, processing and transducer control functionalities. Theproposed architecture reduces the physical size, power and increases speedup ofprocessing due to inter-module communication. Results indicate the accuracy of theproposed system is tested with a temperature sensor which has 1-wire protocol

    Programmable logic devices in sensor networks: a survey

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    This paper presents a survey about the use of reconfigurable hardware technologies in sensor networks, considering proposals published in two of the leading conferences of Programmable Logic Devices: FPL and SPL. These proposals cover different applications such as wireless communications, different networks topics and sensors. Some of the papers considered in this survey are directly related with WSN, such as reconfigurable nodes or lowpower hardware platforms intended for sensor networks. Other papers are not directly related to WSN, but they present results and concepts that may be of interest in the field of the WSNs.Sociedad Argentina de Informática e Investigación Operativ

    Low-Power and Programmable Analog Circuitry for Wireless Sensors

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    Embedding networks of secure, wirelessly-connected sensors and actuators will help us to conscientiously manage our local and extended environments. One major challenge for this vision is to create networks of wireless sensor devices that provide maximal knowledge of their environment while using only the energy that is available within that environment. In this work, it is argued that the energy constraints in wireless sensor design are best addressed by incorporating analog signal processors. The low power-consumption of an analog signal processor allows persistent monitoring of multiple sensors while the device\u27s analog-to-digital converter, microcontroller, and transceiver are all in sleep mode. This dissertation describes the development of analog signal processing integrated circuits for wireless sensor networks. Specific technology problems that are addressed include reconfigurable processing architectures for low-power sensing applications, as well as the development of reprogrammable biasing for analog circuits

    Low-Power and Programmable Analog Circuitry for Wireless Sensors

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    Embedding networks of secure, wirelessly-connected sensors and actuators will help us to conscientiously manage our local and extended environments. One major challenge for this vision is to create networks of wireless sensor devices that provide maximal knowledge of their environment while using only the energy that is available within that environment. In this work, it is argued that the energy constraints in wireless sensor design are best addressed by incorporating analog signal processors. The low power-consumption of an analog signal processor allows persistent monitoring of multiple sensors while the device\u27s analog-to-digital converter, microcontroller, and transceiver are all in sleep mode. This dissertation describes the development of analog signal processing integrated circuits for wireless sensor networks. Specific technology problems that are addressed include reconfigurable processing architectures for low-power sensing applications, as well as the development of reprogrammable biasing for analog circuits

    Interfacing of neuromorphic vision, auditory and olfactory sensors with digital neuromorphic circuits

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    The conventional Von Neumann architecture imposes strict constraints on the development of intelligent adaptive systems. The requirements of substantial computing power to process and analyse complex data make such an approach impractical to be used in implementing smart systems. Neuromorphic engineering has produced promising results in applications such as electronic sensing, networking architectures and complex data processing. This interdisciplinary field takes inspiration from neurobiological architecture and emulates these characteristics using analogue Very Large Scale Integration (VLSI). The unconventional approach of exploiting the non-linear current characteristics of transistors has aided in the development of low-power adaptive systems that can be implemented in intelligent systems. The neuromorphic approach is widely applied in electronic sensing, particularly in vision, auditory, tactile and olfactory sensors. While conventional sensors generate a huge amount of redundant output data, neuromorphic sensors implement the biological concept of spike-based output to generate sparse output data that corresponds to a certain sensing event. The operation principle applied in these sensors supports reduced power consumption with operating efficiency comparable to conventional sensors. Although neuromorphic sensors such as Dynamic Vision Sensor (DVS), Dynamic and Active pixel Vision Sensor (DAVIS) and AEREAR2 are steadily expanding their scope of application in real-world systems, the lack of spike-based data processing algorithms and complex interfacing methods restricts its applications in low-cost standalone autonomous systems. This research addresses the issue of interfacing between neuromorphic sensors and digital neuromorphic circuits. Current interfacing methods of these sensors are dependent on computers for output data processing. This approach restricts the portability of these sensors, limits their application in a standalone system and increases the overall cost of such systems. The proposed methodology simplifies the interfacing of these sensors with digital neuromorphic processors by utilizing AER communication protocols and neuromorphic hardware developed under the Convolution AER Vision Architecture for Real-time (CAVIAR) project. The proposed interface is simulated using a JAVA model that emulates a typical spikebased output of a neuromorphic sensor, in this case an olfactory sensor, and functions that process this data based on supervised learning. The successful implementation of this simulation suggests that the methodology is a practical solution and can be implemented in hardware. The JAVA simulation is compared to a similar model developed in Nengo, a standard large-scale neural simulation tool. The successful completion of this research contributes towards expanding the scope of application of neuromorphic sensors in standalone intelligent systems. The easy interfacing method proposed in this thesis promotes the portability of these sensors by eliminating the dependency on computers for output data processing. The inclusion of neuromorphic Field Programmable Gate Array (FPGA) board allows reconfiguration and deployment of learning algorithms to implement adaptable systems. These low-power systems can be widely applied in biosecurity and environmental monitoring. With this thesis, we suggest directions for future research in neuromorphic standalone systems based on neuromorphic olfaction

    Execution modeling in self-aware FPGA-based architectures for efficient resource management

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    SRAM-based FPGAs have significantly improved their performance and size with the use of newer and ultra-deep-submicron technologies, even though power consumption, together with a time-consuming initial configuration process, are still major concerns when targeting energy-efficient solutions. System self-awareness enables the use of strategies to enhance system performance and power optimization taking into account run-time metrics. This is of particular importance when dealing with reconfigurable systems that may make use of such information for efficient resource management, such as in the case of the ARTICo3 architecture, which fosters dynamic execution of kernels formed by multiple blocks of threads allocated in a variable number of hardware accelerators, combined with module redundancy for fault tolerance and other dependability enhancements, e.g. side-channel-attack protection. In this paper, a model for efficient dynamic resource management focused on both power consumption and execution times in the ARTICo3 architecture is proposed. The approach enables the characterization of kernel execution by using the model, providing additional decision criteria based on energy efficiency, so that resource allocation and scheduling policies may adapt to changing conditions. Two different platforms have been used to validate the proposal and show the generalization of the model: a high-performance wireless sensor node based on a Spartan-6 and a standard off-the-shelf development board based on a Kintex-7
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