Power System Engineer

CleanTech Talent
London
11 months ago
Applications closed

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R&D Senior Power Systems Engineer

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Up to £70,000 depending on experience. Negotiable for the right person.



Are you looking to work on cutting-edge technologies that have a real positive impact on our planet?


Does innovation, development, collaboration & inclusivity matter to you? If so, this could be the company & opportunity for you!



The Company


An International company that are at the forefront of the energy revolution with their innovative and hi-tech product, whose mission is to ensure worldwide grids are low carbon and are driving a more sustainable, efficient, and resilient energy ecosystem.



The Role – Senior R&D Power System Consultant


You will work closely with R&D and Operational functions to support new product development by applying power systems modelling, signal processing, machine learning and analysis techniques to ensure new and existing products can be fully delivered.



You will have technical project ownership whilst implementing new technologies relating to power system monitoring and operations.



You will need to interface between TSOs & DNOs, ensuring that products and services are relevant.



Essential Attributes


  • Smart grid technologies from a DSO or TSO environment
  • Deep technical knowledge of power systems
  • PSSE or PSCAD
  • Python
  • Scoping, delivery or operation of Grid, Utility or Energy Services.
  • Research and development
  • PMUs
  • WAMS
  • Oscillations, low inertia, high ROCOF and system strength challenge
  • Experience in costing and tendering response related work
  • PhD in electrical engineering or Master’s degree




On offer:


  • Collaboration & inclusive working environment
  • Company Share Options
  • Annual performance-based bonus schemes
  • Private Medical and 4 x life Insurance scheme
  • Long service holiday scheme
  • Holiday purchase scheme
  • Company pension scheme
  • Flexible working patterns
  • Salary up to £70,000 DOE & Qualifications




Whats next


Please apply with your most up to date CV and one of the team will be in touch OR reach out to Daniel Salway for a confidential call.





CleanTech Talent are acting as an employment agency for this position.

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