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Their paper, entitled “Assessment of Three Deep Reinforcement Learning Algorithms for District Heating Network Optimal Control”, demonstrates how the optimization problem of district heating network control can be reformulated as a policy learning task, by coupling an autonomous agent with a digital twin of the network.
The work addresses the impact of domain walls on the thermal conductivity in ferroelectric and ferroelastic materials.
A new framework for the common works between CSTB and CETHIL
20 minutes with a scientist in a boat on a lake!
Personal protective equipements against Covid-19 are fabricated by 3D printing teams at INSA, in particular at CETHIL