Reinforcement Learning for Batch-to-Batch Bioprocess Optimisation | AISC

Published on ● Video Link: https://www.youtube.com/watch?v=tgqgH34uptk



Duration: 31:18
610 views
20


Speaker(s): Antonio Del Rio Chanona
Moderator: Mehrshad Esfahani

Find the recording, slides, and more info at https://ai.science/e/reinforcement-learning-for-bioprocess-optimization--DALUOZ5YQ3DDKUGI

Motivation / Abstract
Bioprocesses have received great attention from the scientific community as an alternative to fossil-based products by microorganisms-synthesised counterparts. However, bioprocesses are generally operated at unsteady-state conditions and are stochastic from a macro-scale perspective, making their optimisation a challenging task. Furthermore, as biological systems are highly complex, plant-model mismatch is usually present. To address the aforementioned challenges, in this work, we propose a reinforcement learning based online optimisation strategy. We first use reinforcement learning to learn an optimal policy given a preliminary process model. This means that we compute diverse trajectories and feed them into a recurrent neural network, resulting in a policy network which takes the states as input and gives the next optimal control action as output. Through this procedure, we are able to capture the previously believed behaviour of the biosystem. Subsequently, we adopted this network as an initial policy for the “real” system (the plant) and apply a batch-to-batch reinforcement learning strategy to update the network’s accuracy. This is computed by using a more complex process model (representing the real plant) embedded with adequate stochasticity to account for the perturbations in a real dynamic bioprocess. We demonstrate the effectiveness and advantages of the proposed approach in a case study by computing the optimal policy in a realistic number of batch runs.

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