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Analog/Digital Implementation of Fractional Order Chaotic Circuits and Applications [[electronic resource] /] / by Esteban Tlelo-Cuautle, Ana Dalia Pano-Azucena, Omar Guillén-Fernández, Alejandro Silva-Juárez
Analog/Digital Implementation of Fractional Order Chaotic Circuits and Applications [[electronic resource] /] / by Esteban Tlelo-Cuautle, Ana Dalia Pano-Azucena, Omar Guillén-Fernández, Alejandro Silva-Juárez
Autore Tlelo-Cuautle Esteban
Edizione [1st ed. 2020.]
Pubbl/distr/stampa Cham : , : Springer International Publishing : , : Imprint : Springer, , 2020
Descrizione fisica 1 online resource (XVI, 212 p. 124 illus., 88 illus. in color.)
Disciplina 621.3815
Soggetto topico Electronic circuits
Cooperating objects (Computer systems)
Electronics
Electronic Circuits and Systems
Cyber-Physical Systems
Electronics and Microelectronics, Instrumentation
ISBN 3-030-31250-X
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Nota di contenuto Integer and Fractional Chaotic Circuits and Systems -- Characteristics of chaotic systems -- Simulation and optimization of fractional-order chaotic systems -- Analog implementations of fractional-order chaotic systems -- Digital implementations of fractional-order chaotic systems -- Synchronization and applications of fractional-order chaotic systems -- Conclusions.
Record Nr. UNINA-9910366591903321
Tlelo-Cuautle Esteban  
Cham : , : Springer International Publishing : , : Imprint : Springer, , 2020
Materiale a stampa
Lo trovi qui: Univ. Federico II
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Dew Computing [[electronic resource] ] : The Sustainable IoT Perspectives / / edited by Debashis De, Samarjit Roy
Dew Computing [[electronic resource] ] : The Sustainable IoT Perspectives / / edited by Debashis De, Samarjit Roy
Edizione [1st ed. 2024.]
Pubbl/distr/stampa Singapore : , : Springer Nature Singapore : , : Imprint : Springer, , 2024
Descrizione fisica 1 online resource (347 pages)
Disciplina 004.678
Collana Internet of Things, Technology, Communications and Computing
Soggetto topico Telecommunication
Internet of things
Electronic circuits
Cooperating objects (Computer systems)
Communications Engineering, Networks
Internet of Things
Electronic Circuits and Systems
Cyber-Physical Systems
ISBN 981-9945-90-9
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Nota di contenuto Fundamentals of Dew Computing -- Foundation of system architectures in Dew computing paradigm -- IoT Convergence paradigm: Cloud, Edge, Fog, and Dew Computing -- Statistical and computational frameworks in Dew-based IoT ecosystems -- Intrusion Detection Systems and analysis in Intelligent Dew-based IoT systems.
Record Nr. UNINA-9910760260403321
Singapore : , : Springer Nature Singapore : , : Imprint : Springer, , 2024
Materiale a stampa
Lo trovi qui: Univ. Federico II
Opac: Controlla la disponibilità qui
Embedded Machine Learning for Cyber-Physical, IoT, and Edge Computing [[electronic resource] ] : Use Cases and Emerging Challenges / / edited by Sudeep Pasricha, Muhammad Shafique
Embedded Machine Learning for Cyber-Physical, IoT, and Edge Computing [[electronic resource] ] : Use Cases and Emerging Challenges / / edited by Sudeep Pasricha, Muhammad Shafique
Autore Pasricha Sudeep
Edizione [1st ed. 2024.]
Pubbl/distr/stampa Cham : , : Springer Nature Switzerland : , : Imprint : Springer, , 2024
Descrizione fisica 1 online resource (571 pages)
Disciplina 006.22
Altri autori (Persone) ShafiqueMuhammad
Soggetto topico Embedded computer systems
Electronic circuits
Cooperating objects (Computer systems)
Embedded Systems
Electronic Circuits and Systems
Cyber-Physical Systems
ISBN 3-031-40677-X
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Record Nr. UNINA-9910760256003321
Pasricha Sudeep  
Cham : , : Springer Nature Switzerland : , : Imprint : Springer, , 2024
Materiale a stampa
Lo trovi qui: Univ. Federico II
Opac: Controlla la disponibilità qui
Embedded Machine Learning for Cyber-Physical, IoT, and Edge Computing [[electronic resource] ] : Software Optimizations and Hardware/Software Codesign / / edited by Sudeep Pasricha, Muhammad Shafique
Embedded Machine Learning for Cyber-Physical, IoT, and Edge Computing [[electronic resource] ] : Software Optimizations and Hardware/Software Codesign / / edited by Sudeep Pasricha, Muhammad Shafique
Autore Pasricha Sudeep
Edizione [1st ed. 2024.]
Pubbl/distr/stampa Cham : , : Springer Nature Switzerland : , : Imprint : Springer, , 2024
Descrizione fisica 1 online resource (481 pages)
Disciplina 006.22
Altri autori (Persone) ShafiqueMuhammad
Soggetto topico Embedded computer systems
Electronic circuits
Cooperating objects (Computer systems)
Embedded Systems
Electronic Circuits and Systems
Cyber-Physical Systems
ISBN 3-031-39932-3
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Nota di contenuto Intro -- Preface -- Acknowledgments -- Contents -- Part I Efficient Software Design for Embedded Machine Learning -- Machine Learning Model Compression for Efficient Indoor Localization on Embedded Platforms -- 1 Introduction -- 2 Background and Related Work -- 3 CHISEL Framework -- 3.1 Data Preprocessing and Augmentation -- 3.2 Network Architecture -- 3.3 Model Compression -- 4 Experiments -- 4.1 Evaluation on UJIIndoorLoc Dataset -- 4.2 Evaluation on Compression-Aware Training -- 5 Conclusion -- References -- A Design Methodology for Energy-Efficient Embedded Spiking Neural Networks -- 1 Introduction -- 1.1 Overview -- 1.2 Design Constraints for Embedded SNNs -- 2 Preliminaries -- 2.1 Spiking Neural Networks (SNNs) -- 2.2 Spike-Timing-Dependent Plasticity (STDP) -- 3 A Design Methodology for Embedded SNNs -- 3.1 Overview -- 3.2 Reduction of SNN Operations -- 3.3 Learning Enhancements -- 3.4 Weight Quantization -- 3.5 Evaluation of Memory and Energy Requirements -- 3.6 Employment of Approximate DRAM -- 4 Experimental Evaluations -- 4.1 Classification Accuracy -- 4.2 Reduction of Memory Requirement -- 4.3 Improvement of Energy Efficiency -- 4.4 Impact of Approximate DRAM -- 5 Conclusion -- References -- Compilation and Optimizations for Efficient Machine Learning on Embedded Systems -- 1 Introduction -- 2 Background and Related Works -- 2.1 Efficient DNN Designs -- 2.2 Efficient Accelerator Designs and DNN Mapping Methods -- 2.3 Efficient Co-Design Optimization -- 3 Efficient Machine Learning Model Designs -- 3.1 The ELB-NN -- 3.1.1 Hybrid Quantization Scheme -- 3.1.2 Hardware Accelerator for ELB-NN -- 3.2 The VecQ -- 3.2.1 Quantization with Vector Loss -- 3.2.2 Framework Integration -- 4 Efficient Accelerator Design and Workload Mapping -- 4.1 DNNBuilder -- 4.1.1 An End-to-end Automation Flow -- 4.1.2 Architecture Novelties.
4.1.3 State-of-the-art Performance -- 4.2 PyLog: A Python-Based FPGA Programming Flow -- 4.2.1 PyLog Flow Overview -- 4.2.2 PyLog Features -- 4.2.3 PyLog Evaluation Results -- 5 Efficient Optimizations -- 5.1 Overview of Hardware-aware Neural Architecture Search (NAS) -- 5.2 HW-Aware NAS Formulation -- 5.3 FPGA/DNN Co-Design -- 5.3.1 The Key to Co-Design: Bundle -- 5.3.2 Progressively Reducing Search Space -- 5.3.3 Evaluation Results -- 5.4 EDD: Efficient Differential DNN Architecture Search -- 5.4.1 Fused Co-Design Space -- 5.4.2 Differentiable Performance and Resource Formulation -- 5.4.3 State-of-the-art Results -- 6 Conclusion -- References -- A Pedestrian Detection Case Study for a Traffic Light Controller -- 1 Introduction -- 2 Related Work -- 2.1 Neural Networks for Pedestrian Detection -- 2.2 Pedestrian Detection on Embedded Systems -- 2.3 Quantization -- 3 Pedestrian Detection Use Case -- 4 Results -- 4.1 Experimentation Setup -- 4.2 No Constraints -- 4.3 Cost Constraints -- 4.4 Cost, Latency, and Precision Constraints -- 4.5 Effect of Resolution and Quantization -- 5 Conclusion -- References -- How to Train Accurate BNNs for Embedded Systems? -- 1 Introduction -- 2 Related Work -- 3 Background on BNNs -- 3.1 Inference -- 3.2 Training -- 4 Classification of Accuracy Repair Techniques -- 5 Overview of Accuracy Repair Techniques as Applied in the Literature -- 5.1 Training Techniques -- 5.1.1 Binarizer (STE) -- 5.1.2 Normalization -- 5.1.3 Teacher-Student -- 5.1.4 Regularization -- 5.1.5 Two-Stage Training -- 5.1.6 Optimizer -- 5.2 Network Topology Changing -- 5.2.1 Scaling Factor -- 5.2.2 Ensemble -- 5.2.3 Activation Function -- 5.2.4 Double Residual -- 5.2.5 Squeeze-and-Excitation -- 6 Empirical Review of Accuracy Repair Methods -- 6.1 Establishing the Design Space -- 6.2 Finding a Good Baseline BNN -- 6.3 Design Space Exploration.
6.3.1 Binarizer (STE) -- 6.3.2 Normalization -- 6.3.3 Scaling Factor -- 6.3.4 Two-Stage Training, Activation Function, and Double Residual -- 7 Discussion and Future Research -- 7.1 Accuracy Gap -- 7.2 Benefit and Cost of BNNs -- 8 Conclusion -- References -- Embedded Neuromorphic Using Intel's Loihi Processor -- 1 Introduction -- 2 Brain-Inspired Spiking Neural Networks -- 2.1 Spiking Neuron Models -- 2.2 Spike Coding Methods -- 2.3 SNN Learning Methods -- 3 Conventional Architectures vs. Neuromorphic Architectures -- 4 Event-Based Cameras -- 5 Applications and Datasets for Event-Based SNNs -- 6 The Loihi Architecture -- 6.1 Neuron Model -- 6.2 Chip Architecture -- 6.3 Second Generation: Loihi 2 -- 6.4 Tools to Support Loihi Developers -- 6.5 SOTA Results of Event-Based SNNs on Loihi -- 7 Case Study for Autonomous Vehicles: Car Detection with CarSNN -- 7.1 Problem Analysis and General Design Decisions -- 7.2 CarSNN Methodology -- 7.2.1 CarSNN Model Design -- 7.2.2 Parameters for Training -- 7.2.3 Parameters for Feeding the Input Data -- 7.3 Evaluation of CarSNN Implemented on Loihi -- 7.3.1 Experimental Setup -- 7.3.2 Accuracy Results for Offline Trained CarSNN -- 7.3.3 CarSNN Implemented on Loihi -- 7.3.4 Comparison with the State of the Art -- 8 Conclusion -- References -- Part II Hardware-Software Co-Design and Co-Optimizations for Embedded Machine Learning -- Machine Learning for Heterogeneous Manycore Design -- 1 Introduction -- 2 ML-Enabled 3D CPU/GPU-Based Heterogeneous Manycore Design -- 2.1 Related Prior Work -- 2.1.1 3D Heterogeneous Manycore Systems -- 2.1.2 Multi-Objective Optimization Algorithms -- 3 3D Heterogeneous Manycore Design Formulation -- 4 MOO-STAGE: ML-Enabled Manycore Design Framework -- 4.1 MOO-STAGE: Local Search -- 4.2 MOO-STAGE: Meta Search -- 5 Experimental Results -- 5.1 Experimental Setup.
5.2 Comparing the Different Algorithms -- 5.3 Comparison with Mesh NoC-Based Heterogeneous Manycore System -- 6 MOO-STAGE FOR M3D-Based Manycore Systems -- 6.1 MOO-STAGE for M3D Design -- 7 Conclusion -- References -- Hardware-Software Co-design for Ultra-Resource-Constrained Embedded Machine Learning Inference: A Printed Electronics Use Case -- 1 Introduction -- 2 Background on Printed Electronics -- 3 Preliminaries -- 4 Bespoke ML Classification Circuits -- 4.1 Resource-Aware ML Algorithm Selection -- 4.2 Bespoke Classifier Implementation -- 5 Co-Design for Approximate ML Classification Circuits -- 5.1 Approximate MLPs and SVMs -- 5.2 Approximate Decision Trees -- 6 Co-design for Stochastic Neural Network Circuits -- 6.1 Mixed-Signal Stochastic Neuron -- 6.2 Analog Stochastic SNG -- 6.3 Analog Stochastic Activation Function -- 6.4 Hardware-Driven Training -- 6.5 Mixed-Signal Stochastic Inference -- 7 Conclusion -- References -- Cross-Layer Optimizations for Efficient Deep Learning Inference at the Edge -- 1 Introduction -- 2 Preliminaries -- 3 DNN Optimization Techniques -- 3.1 Pruning -- 3.1.1 Fine-Grained Pruning -- 3.1.2 Course-Grained Pruning -- 3.2 Quantization -- 3.3 Knowledge Distillation -- 3.4 Neural Architecture Search -- 3.5 Hardware Approximations -- 4 Cross-Layer Optimization -- 4.1 Methodology -- 4.2 Structured Pruning -- 4.3 Quantization -- 4.4 Hardware-Level Approximations: Impact of Self-Healing and Non-Self-Healing Approximate Designs on DNN Accuracy -- 5 End-to-End System-Level Approximations -- 6 Conclusion -- References -- Co-designing Photonic Accelerators for Machine Learningon the Edge -- 1 Introduction -- 2 Background and Related Work -- 3 Noncoherent Photonic Computation Overview -- 4 CrossLight Architecture -- 4.1 MR Device Engineering and Fabrication -- 4.2 Tuning Circuit Design -- 4.3 Architecture Design.
4.3.1 Decomposing Vector Operations in CONV/FC Layers -- 4.3.2 Vector Dot Product (VDP) Unit Design -- 4.3.3 Optical Wavelength Reuse in VDP Units -- 5 Evaluation and Simulation Results -- 5.1 Simulation Setup -- 5.2 Results: CrossLight Resolution Analysis -- 5.3 Results: CrossLight Sensitivity Analysis -- 5.4 Results: Comparison with State-of-the-Art Accelerators -- 6 Conclusion -- References -- Hardware-Software Co-design of Deep Neural Architectures: From FPGAs and ASICs to Computing-in-Memories -- 1 Introduction -- 2 Hardware-Software Co-design with Neural Architecture Search -- 3 Hardware-Aware Neural Architecture Search for FPGA -- 3.1 Implementation of DNNs on FPGAs -- 3.2 Co-design Framework for FPGAs -- 3.2.1 Problem Statement and Solution -- 3.3 Experiments -- 3.3.1 Search Space Setup -- 3.4 Comparison Results with the Existing NAS Frameworks -- 3.5 Comparison Results with the Existing Architectures -- 3.6 Importance of Co-exploration -- 3.7 Concluding Remarks for NAS-F -- 4 Co-design of Neural Networks and ASICs -- 4.1 Problem Analysis for DNN-ASIC Co-design -- 4.1.1 Major Components -- 4.1.2 Problem Definition -- 4.2 Co-design Framework for ASIC -- 4.3 Experimental Evaluation -- 4.3.1 Evaluation Environment -- 4.4 Design Space Exploration -- 4.4.1 Results on Multiple Tasks for Multiple Datasets -- 4.5 Concluding Remarks for NASAIC -- 5 Co-design of Neural Networks and Computing-in-Memory Accelerators -- 5.1 Compute-in-Memory Neural Accelerators -- 5.1.1 Device and Its Variations -- 5.1.2 Crossbar Architecture -- 5.1.3 NeuroSIM -- 5.2 Problem Definition -- 5.3 Co-design Framework for CiM -- 5.4 Experiments and Results -- 5.4.1 Experiment Setup -- 5.4.2 Comparison Results to State-of-the-Art NAS -- 5.4.3 Results of Multi-Objective Optimization -- 5.5 Concluding Remarks for NACIM -- 6 Conclusions -- References.
Hardware and Software Optimizations for Capsule Networks.
Record Nr. UNINA-9910760275803321
Pasricha Sudeep  
Cham : , : Springer Nature Switzerland : , : Imprint : Springer, , 2024
Materiale a stampa
Lo trovi qui: Univ. Federico II
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High-Performance Integrated Charge Pumps [[electronic resource] ] : Design and Novel Solutions / / by Andrea Ballo, Alfio Dario Grasso, Gaetano Palumbo
High-Performance Integrated Charge Pumps [[electronic resource] ] : Design and Novel Solutions / / by Andrea Ballo, Alfio Dario Grasso, Gaetano Palumbo
Autore Ballo Andrea
Edizione [1st ed. 2024.]
Pubbl/distr/stampa Cham : , : Springer International Publishing : , : Imprint : Springer, , 2024
Descrizione fisica 1 online resource (171 pages)
Disciplina 621.3815322
Altri autori (Persone) GrassoAlfio Dario
PalumboGaetano
Soggetto topico Electronic circuits
Electronics
Cooperating objects (Computer systems)
Electronic Circuits and Systems
Electronics and Microelectronics, Instrumentation
Cyber-Physical Systems
ISBN 3-031-43597-4
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Nota di contenuto Introduction -- Integrated Charge Pump Basics -- Variations and Evolution of Dickson CP Topologies -- Strategies and Design for High-Speed Dickson CP Applications -- Strategies and Design for Low-Power -- Strategies and Design for Ultra Low-Voltage Dickson CP Applications -- Dickson CP Control Circuits -- Unconventional CP Applications -- Conclusions.
Record Nr. UNINA-9910760282303321
Ballo Andrea  
Cham : , : Springer International Publishing : , : Imprint : Springer, , 2024
Materiale a stampa
Lo trovi qui: Univ. Federico II
Opac: Controlla la disponibilità qui
Security of FPGA-Accelerated Cloud Computing Environments [[electronic resource] /] / edited by Jakub Szefer, Russell Tessier
Security of FPGA-Accelerated Cloud Computing Environments [[electronic resource] /] / edited by Jakub Szefer, Russell Tessier
Edizione [1st ed. 2024.]
Pubbl/distr/stampa Cham : , : Springer International Publishing : , : Imprint : Springer, , 2024
Descrizione fisica 1 online resource (X, 328 p. 187 illus., 157 illus. in color.)
Disciplina 621.3815
Soggetto topico Electronic circuits
Electronic circuit design
Cooperating objects (Computer systems)
Electronic Circuits and Systems
Electronics Design and Verification
Cyber-Physical Systems
ISBN 3-031-45395-6
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Nota di contenuto Introduction to, and history of, Cloud FPGAs -- FPGA device level security issues and countermeasures -- FPGA interfacing security issues (buses attacks, memory interfaces, etc -- IP protection for FPGAs in the cloud -- Software system security for cloud FPGAs (hypervisor leaks, shared memory use) -- Cross-node/network security – (e.g., voltage attack across nodes, network flooding by FPGAs) -- Likely future attacks -- Summary and conclusion.
Record Nr. UNINA-9910799231803321
Cham : , : Springer International Publishing : , : Imprint : Springer, , 2024
Materiale a stampa
Lo trovi qui: Univ. Federico II
Opac: Controlla la disponibilità qui