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Optimization of Hospital Bed Occupancy in Hospitals Using Double Deep Q Network (DDQN)

机译:双层Q网络优化医院医院住宿宿舍(DDQN)

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Obviously, the disappointments found in the emergency clinics the executives have typically identified with the absence of data and inadequate assets the board. The utilization of Deep Q Network (DDQN) can add to defeat these restrictions to distinguish applicable information on patient's administration and giving significant data to administrators to help their choices. All through this investigation were actuated DDQN models competent to make expectations in a real-time hospital environment and utilizing real clinical data. Considering this the proposed model is developed using the OpenAI Gym system, and show its utilization on a basic clinical bed occupancy model. Also, deep RL Agents utilizing PyTorch, and the Hospital Simulation is developed using SimPy. Research work exhibit a model utilizing a Double Deep Q Network as the Deep Reinforcement Learning Agent (DL Agent).
机译:显然,紧急诊所中发现的失望高管通常通过没有数据和董事会的资产不足而识别。深度Q网络(DDQN)的利用可以添加以打败这些限制,以区分有关患者的管理有关适用信息,并为管理人员提供重要数据以帮助他们的选择。通过这项调查,致力于DDQN模型,能够在实时医院环境中进行期望,并利用真正的临床数据。考虑到这一拟议的模型是使用Openai健身房系统开发的,并在基本临床床占用模型上显示利用。此外,利用Pytorch的深rl代理商和医院仿真是使用simpy开发的。研究工作表现出利用双层Q网络作为深加固学习代理(DL代理)的模型。

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