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FEATURE SENSORS & SENSING SYSTEMS


SENSOR INTEGRATION MACHINES BOOST SICK’S ‘EDGE’ PROCESSING POWER


network edge, making new applications possible, as well as saving load and space in the PLC. The beauty of the SIM is it is also plug and play for a quick project start, without the need for additional hardware and a time- consuming search for software drivers, components and cables.” The SICK SIM1000 and SIM2000


collect and evaluate data from multiple sensors working together at the field- level via standard interfaces including Ethernet for cameras and LiDAR sensors, and as well as IO-Link, CAN and Serial. The multi-sensor outputs, values and results can be used to drive typical industrial automation applications such as camera-based inspection, measurement, or identification of objects. Collected data can be processed and


displayed e.g. for quality control, process analysis, material management or condition monitoring purposes, while the information is monitored, archived and distributed for diagnostic purposes via cloud-based services. The programmable SICK Interface and


SICK has extended its Sensor Integration Machine (SIM) family with the launch of two high- performance, one-box, processing hubs that fuse decentralised, multi-sensor co-operation with field-to-cloud connectivity as part of Industry 4.0


T


he SICK SIM1000 and SIM2000 Sensor Integration Machines are


programmable sensor connection and data processing hubs that open up new possibilities to develop custom applications in SICK’s AppSpace ecosystem. With up to four Ethernet ports, they support interfaces for cameras, lighting, LiDAR scanners, encoders, photoelectric and displacement sensors, as well as to higher level controls and to the Cloud. Neil Sandhu, SICK’s national product


manager for Imaging, Measurement, Ranging and Systems, said: “For all kinds of factory or logistics operations, the new SICK SIM1000 and SIM2000 make progress towards so called ‘edge computing’ as part of Industry 4.0 straightforward. They have also extended the possibilities for engineers from SICK and our system integrator


8 FEBRUARY 2020 | IRISH MANUFACTURING


partners to imagine new multi-sensor applications via SICK’s AppSpace development platform.


T he new SICK SIM1000 and SIM2000


Algorithm API facilitates full image and sensor processing with a range of model options to cover all industrial sensor, LiDAR and vision applications, as well as a configurable firewall for security in data capture. The SIM2000 processing core also facilitates interfacing with a HALCON image library for advanced sensor data and image processing. Additional connection options are also


available, for example via the FlexiSoft safety controller, allowing integration of safety systems with factory automation functions. The SICK SIM1000 and SIM2000 do not


For all kinds of factory or


logistics operations, the new SICK SIM1000 and SIM2000


make progress towards so called ‘edge computing’ as part of Industry 4.0


straightforward"


“In Industry 4.0, computing power is increasingly being relocated to the


require fan-cooling and are housed in enclosures rated to IP20 or IP65, depending on model, so are compatible with a range of industrial conditions, including dirty, dusty and humid environments. The flexibility of the housing options enable mounting at the machine or in a separate cabinet. For more information on the SICK range


of products, please contact: Andrea Hornby 01727 831121 or, email andrea.hornby@sick.co.uk.


SICK www.sick.com T: +44 (0) 1727 831 121


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