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position as POSTDOC (F/M/X) in the Optimization and Optimal Control Group . (Full-time employee) for an initial period of one year, with starting date to be arranged. Your Tasks The full-time position is
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, Austria [map ] Subject Area: Optimization and Optimal Control Appl Deadline: (posted 2025/04/17, listed until 2025/07/01) Position Description: Apply Position Description As a central non-university
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, so that it can be easily used in practice (fast optimization, embedded decision-making, online updating). 1. Design a lightweight statistical/probabilistic surrogate model, integrating: • an estimation
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control and energy management strategies, including centralized / distributed control approaches, for ESS coordination and ancillary service delivery. Develop optimization algorithms and Al-based methods
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., infrastructure investments for refueling or maintenance equipment). The model will optimize key control variables, such as the replacement year and the energy and technology choice for each vehicle, subject to
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. This includes the controlled synthesis of nanocatalysts, their advanced characterization (TEM, XRD, operando spectroscopies), and analyzing the relationship between their structure and catalytic activity
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theoretical basis for modelling functional biodiversity, based on eco-evolutionary optimality (EEO) theory. The PDRA will be explicitly responsible for statistical analysis of plant trait data and the
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singular elliptic and parabolic PDEs, free boundary problems, optimal control of free boundary systems with distributed parameters. Current areas of interest include Potential Theory, Harmonic Analysis
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quite heavily. We establish new results concerning the analysis of stochastically driven anisotropic fluids, design novel numerical simulation and optimal control schemes, and provide new means for risk
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modelling, control, and optimization, with applications in chemical and pharmaceutical manufacturing; data-driven modelling and machine learning applications in process industries; advanced process control