151,921 research outputs found
A microinstrumenation system for industrial applications
This paper describes the development of a
microinstrumentation system in silicon containing all the
components of the data acquisition system, such as sensors,
signal-conditioning circuits, analog-digital converter, interface
circuits, sensor bus interface, and an embedded
microcontroller (MCU). The microinstrumentation system is
to be fabricated using the Multi-Chip-Module (MCM)
technology based on a chip-level infrastructure. A standard
silicon platform is the floorplan for individual smart sensor die
attachment and an on-chip local sensor bus interface, testing
facilities, optional compatible sensors (such as thermal
sensors). The microinstrumentation system is controlled by a
MCU with several modes of low-power operation (inclusive
stand-by mode). As the intended application requires a huge
amount of data-processing, a RISC-type MCU architecture is
to be used. The MCU communicates with the front-end sensors
via a two-line (clock and data lines) intramodule sensor bus
(Integrated Smart Sensor bus). The sensor scan rate is
adaptive and can be event triggered. This upgraded version of
the ISS bus allows: service and interrupt request from the
sensors, test and calibration facilities. However, the additional
functionality requires a third line. The MCU also controls the
power consumption and the thermal budget of all system. This
paper also presents three applications for the
microinstrumentation system: condition monitoring of
machines, an inertial navigation system and a miniature
spectrometer.STW - Project DEL55.3733.
TUDelft.
Junta Nacional de Investigação Científica e Tecnológica - Praxis XXI-BD/5181/95
A knowledge discovery approach for the detection of power grid state variable attacks
As the level of sophistication in power system technologies increases, the amount of system state parameters being recorded also increases. This data not only provides an opportunity for monitoring and diagnostics of a power system, but it also creates an environment wherein security can be maintained. Being able to extract relevant information from this pool of data is one of the key challenges still yet to be obtained in the smart grid. The potential exists for the creation of innovative power grid cybersecurity applications, which harness the information gained from advanced analytics. Such analytics can be based on the extraction of key features from statistical measures of reported and contingency power system state parameters. These applications, once perfected, will be able to alert upon potential cyber intrusions providing a framework for the creation of power system intrusion detection schemes derived from the cyber-physical perspective. With the power grid having a growing cyber dependency, these systems are becoming increasingly the target of attacks. The current power grid is undergoing a state of transition where new monitoring and control devices are being constantly added. These newly connected devices, by means of the cyber infrastructure, are capable of executing remote control decisions along with reporting sensor data back to a centralized location.
This dissertation is an examination of advanced data mining and data analytic techniques for the development of a framework for detecting malicious cyber activity in the power grid based solely on reported power system state parameters. Through this examination, results indicate the successful development of a cyber-event detection framework capable of detecting and localizing 92% of the simulated cyber-events. In focusing on specific types of intrusions, this work describes the utilization of machine learning techniques to examine key features of multiple power systems for the detection of said intrusions. System analysis is preformed using the Newton-Raphson method to solve the nonlinear power system partial differential power flow equations for a 5-Bus and 14-Bus power system. This examination offers the theory and simulated implementation examples behind a context specific detection approach for securing the current and next generation\u27s critical infrastructure power grid
An event service supporting autonomic management of ubiquitous systems for e-health
An event system suitable for very simple devices corresponding to a body area network for monitoring patients is presented. Event systems can be used both for self-management of the components as well as indicating alarms relating to patient health state. Traditional event systems emphasise scalability and complex event dissemination for internet based systems, whereas we are considering ubiquitous systems with wireless communication and mobile nodes which may join or leave the system over time intervals of minutes. Issues such as persistent delivery are also important. We describe the design, prototype implementation, and performance characteristics of an event system architecture targeted at this application domain
Test Infrastructure for Address-Event-Representation Communications
Address-Event-Representation (AER) is a communication protocol
for transferring spikes between bio-inspired chips. Such systems may consist of
a hierarchical structure with several chips that transmit spikes among them in
real time, while performing some processing. To develop and test AER based
systems it is convenient to have a set of instruments that would allow to:
generate AER streams, monitor the output produced by neural chips and modify
the spike stream produced by an emitting chip to adapt it to the requirements of
the receiving elements. In this paper we present a set of tools that implement
these functions developed in the CAVIAR EU project.Unión Europea IST-2001-34124 (CAVIAR)Ministerio de Ciencia y Tecnología TIC-2003-08164-C03-0
Policy-based management for body-sensor networks
Accepted versio
Contention-aware performance monitoring counter support for real-time MPSoCs
Tasks running in MPSoCs experience contention delays when accessing MPSoC’s shared resources, complicating task timing analysis and deriving execution time bounds. Understanding the Actual Contention Delay (ACD) each task suffers due to other corunning tasks, and the particular hardware shared resources in which contention occurs, is of prominent importance to increase confidence on derived execution time bounds of tasks. And, whenever those bounds are violated, ACD provides information on the reasons for overruns. Unfortunately, existing MPSoC designs considered in real-time domains offer limited hardware support to measure tasks’ ACD losing all these potential benefits. In this paper we propose the Contention Cycle Stack (CCS), a mechanism that extends performance monitoring counters to track specific events that allow estimating the ACD that each task suffers from every contending task on every hardware shared resource. We build the CCS using a set of specialized low-overhead Performance Monitoring Counters for the Cobham Gaisler GR740 (NGMP) MPSoC – used in the space domain – for which we show CCS’s benefits.The research leading to these results has received funding from the European Space Agency under contracts 4000109680,
4000110157 and NPI 4000102880, and the Ministry of Science and Technology of Spain under contract TIN-2015-65316-P.
Jaume Abella has been partially supported by the Ministry of Economy and Competitiveness under Ramon y Cajal postdoctoral fellowship number RYC-2013-14717.Peer ReviewedPostprint (author's final draft
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