16 post-doc-in-seismic-groung-response-analyses PhD positions at Cranfield University
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analyse vast datasets to identify potential issues before they escalate, facilitating proactive maintenance and compliance assurance. Integrating AI into certification and monitoring processes is
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the double ellipsoidal model, to represent energy input. While effective in reproducing the temperature field for analysing residual stresses and distortions after experimental calibration, these models
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treatment performance, and 3) to conduct cost-benefits analyses and ecosystem assessments to support the application of intensified NbS strategies. The project is an exciting collaboration between Cranfield
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developed a unique methodology and software to simulate and analyse the performance of gas turbine engines in the past half century. The research in this area at Cranfield will be a good starting point for
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. The overall aim of this PhD project is to analyse droplet impact mechanics along with the freezing thermodynamics under high airspeeds to gather important insights into ice adhesion behaviour. The experiments
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systems (eCPS). The focus in this research is on analysing and managing agent behaviour for enhanced sustainability and resilience. The student will be presented with a chance to shape actionable solutions
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to participate and actively engage in CDT activities, including but not limited to: additional training for EDI and Trusted and Responsible Research and Innovation, industrial challenge weeks, CDT seminars
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architectures. From tamper detection to post-quantum countermeasures, you will explore state-of-the-art design techniques while participating in security assessments and collaborative reviews. The project
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response have led to targets for reducing overflow frequency, ecological harm, visual impacts, and protecting bathing water. This PhD project has been co-developed with four UK water companies and the
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infinite extent models and limited extend data based on trust over particular sets, and naturally create explainable AI structures which can further be analysed from a verification and validation perspective