Simulation Engineer

Tiger Resourcing Group
Rochester
3 days ago
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Simulation Engineer


Job Summary:This role is within the Simulation Department, responsible for supporting design optimisation and assessments using both simulation techniques and physical test data.


Key Responsibilities:

  • Perform simulations, particularly focusing on FEA and 1D hydromechanical analysis, to assist in the design, development, validation, and manufacturing of hydraulic components for fuel systems.
  • Collaborate with design and development teams, providing simulation-based recommendations for design and testing improvements.
  • Engage with other teams (e.g., Materials, Validation) and clients to exchange data, enhancing the accuracy and impact of simulations.
  • Report findings to the Team Leader, documenting methods, assumptions, results, and conclusions.
  • Prepare and deliver presentations on work findings to diverse audiences, both in-person and remotely.
  • Contribute to the development and implementation of new analysis methods to boost simulation capabilities and overall product performance.
  • Manage work activities, contribute to project planning, and ensure timely delivery of work packages.
  • Support the coordination of meetings, including the preparation of agendas and minutes.


Skills and Qualifications:

Required:

  • Experience applying simulation methods and physical principles to the design of hydraulic components.
  • In-depth knowledge of ANSYS Mechanical simulation software.
  • Bachelor's degree (or equivalent) in a relevant engineering discipline.
  • Minimum of 2 years' industrial experience using FEA.

Desirable:

  • Familiarity with AMESim/GT simulation software.
  • Experience with Maxwell for magnetic analysis.
  • Knowledge of Tribology.
  • Experience analyzing high-pressure fuel injection systems and understanding related hydraulic components and simulation methods.
  • Understanding of high-pressure gas dynamics.
  • Proficiency in Matlab for software development and analysis.
  • CAD/Solid Modelling experience, ideally with SolidWorks or NX.
  • Understanding of detail drawing and geometric tolerancing.
  • Familiarity with manufacturing processes such as grinding, heat treatment, and injection moulding.


Additional Benefits:

  • 27 days holiday + bank holidays.
  • Long service holiday (if applicable).
  • 37-hour working week with flexible hours available.
  • Pension scheme.
  • Dental plan.
  • Onsite parking.
  • Staff discounts with selected retailers and wellbeing platforms.
  • Discounted gym membership.
  • Subsidised canteen.
  • AXA healthcare (subject to grading).
  • Friendly working environment.
  • Flexible work policy allowing up to 3 days remote work.
  • Relocation Package

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