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The SKA Radio Telescope: Leveraging IoT for a Better Understanding of the Universe
Technology Category
- Networks & Connectivity - RF Transceivers
- Networks & Connectivity - RFID
Applicable Industries
- Aerospace
- Telecommunications
Applicable Functions
- Product Research & Development
Use Cases
- Transportation Simulation
- Virtual Reality
Services
- System Integration
The Challenge
The Square Kilometer Array (SKA) project, led by the SKA Organization from Jodrell Bank Observatory in the UK, aims to challenge Einstein’s seminal theory of relativity, study the formation of the first stars and galaxies, explore dark energy and vast magnetic fields in the cosmos, and answer the age-old question, 'Are we alone in the Universe?' The SKA will be a collection of various types of antennas, including large dish reflectors and aperture antennas, spread over large distances and working together as an interferometric array. The SKA will be 10,000 times faster and 50 times more sensitive than any existing radio telescope. However, the proximity of adjacent antennas and other systems can result in unwanted inter-coupling, even from low-level emissions, due to currents on cables. This inter-coupling needs to be minimized, which requires identifying the coupling mechanisms and applying measures to improve isolation. On-site radio frequency (RF) coupling investigations are required, but they can only be done after installation. During the design, planning, and installation stages, characterization of the electromagnetic (EM) environment has to be done on scale models and through simulations.
About The Customer
The customer in this case is the SKA Organization from Jodrell Bank Observatory in the UK, supported by 11 member countries - South Africa, Australia, Canada, China, Germany, India, Italy, New Zealand, Sweden, The Netherlands, and the United Kingdom. The SKA project aims to challenge Einstein’s seminal theory of relativity, study the formation of the first stars and galaxies, explore dark energy and vast magnetic fields in the cosmos, and answer the age-old question, 'Are we alone in the Universe?' The SKA will be a collection of various types of antennas, including large dish reflectors and aperture antennas, spread over large distances and working together as an interferometric array. The SKA will be 10,000 times faster and 50 times more sensitive than any existing radio telescope.
The Solution
The Research Chair at the University of Stellenbosch focuses on the analysis of both electromagnetic systems and mitigation of radio frequency interference (RFI) between systems. Dr Gideon Wiid and Mr Kuja Stanley Okoth from the EMC Metrology Research and Innovation (EMRIN) group have been working on Electromagnetic compatibility (EMC) metrology issues for the SKA. Simulation was, and still is, the only viable option to study the interference characteristics in detail. This requires extensive verification of the computational electromagnetic (CEM) model and measurements on a scale model in an anechoic chamber. FEKO’s state of the art parallel method of moments (MoM) solver was run at the Centre for High Performance Computing (CHPC) in Cape Town and the simulations were completed in a matter of days. For the actual MeerKAT telescope, on-site RFI measurements were conducted using an emission reference source (ERS) that operates from 30-1000 MHz. The validated FEKO model can then be used to do rigorous RFI studies and make design, layout, shielding, and bonding recommendations to mitigate the interference between these extremely sensitive telescopes.
Operational Impact
Quantitative Benefit
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