Senior Control Systems Engineer

Envisage Recruitment Limited
Banbury
1 month ago
Applications closed

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Control Systems EngineerLevel: Senior / Principal EngineerThis role includes technical design and development tasks with the potential to take on project, customer and team management responsibilities. You will be expected to take control of projects, liaise with customers and suppliers ensuring that progress is on time and to the expected standard as well as integrating with the wider engineering team ensuring best use of the skills available within the team . The role will include all aspects of control system design from initial requirements identification through to delivery; technically ranging from high level architecture, through high and low level software development to systems integration, test, calibration and deployment.Technical responsibilities include:Vehicle level control system architecture design.Safety analysis and design processes.Real time embedded control software design and development.Development and application of system modelsTest rig control and modelling developmentApplication test, calibration and validation.Documentation of all steps in the process.Technical Skills Required:Software: Matlab, Simulink, C/C++, PC applications (Visual studio).Simulation: model development, data generation and analysis.Analysis: Data logging and analysis.Vehicle systems architecture design.Vehicle communications systems including CAN and LIN along with associated tools such as PEAK, Vector CANalyzer/CANo...

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