中文
Profile
VIEW MORE
教育背景: 1.1998-2002年:毕业于西安建筑科技大学(本科); 2.2002-2005年:毕业于西安建筑科技大学(硕士); 3.2011-2017年:毕业于西安建筑科技大学(博士); 工作经历: 1.2005至2018.10:担任西安建筑科技大学信息与控制工程学院专业教师; 2.2018至今:担任西安建筑科技大学建筑设备科学与工程学院专业教师、副院长; 社会兼职: 陕西省自动化学会智能建筑与楼宇自动化专业委员会副秘书长
冯增喜
Associate Professor
Paper Publications
Emergency fire escape path planning model based on improved DDPG algorithm
Release time:2025-12-20 Hits:
Affiliation of Author(s):
建筑设备科学与工程学院
Journal:
JOURNAL OF BUILDING ENGINEERING
Key Words:
Evacuation Path planning Deep deterministic policy gradient Reinforcement learning
Abstract:
Currently, there is a growing demand for fire emergency evacuation capability of buildings. However, current plans based on pre-established static evacuation routes, fail to consider the dynamic nature of real-time fire scenarios. The objective of this paper is to propose a path planning model for fire emergency scenarios. The model is designed to provide evacuation paths for stranded individuals based on fire-related factors. Firstly, the model acquires relevant data through fire simulation, defines the reward function, and establishes an environment for training the agent. Secondly, the Deep Deterministic Policy Gradient (DDPG) algorithm is improved for the characteristics of the fire scenario. The intrinsic motivation was introduced to the DDPG to enhance its ability to explore the state space, and the hindsight experience replay strategy was implemented to improve the algorithm’s training effectiveness. For the hyperparameter sensitivity problem in reinforcement learning, the Beluga Whale Optimization algorithm was employed for hyperparameter optimization. The experimental results show that the reinforcement learning model can plan evacuation paths starting from any location, and the final paths effectively balance the trade-off between risk and distance cost in the environment. The improved DDPG algorithm converges to increase the average reward by about 100, and the applicability of the model is verified in different fire environments. The application of the model can provide a good basis for the selection of emergency evacuation paths, and it has theoretical and practical value for the designation of scientific evacuation plans and the evaluation of the performance of building emergency systems.
First Author:
fengzengxi
Indexed by:
Journal paper
Volume:
95: 110090
ISSN No.:
2352-7102
Translation or Not:
no
Date of Publication:
2024-10-15

Pre One:An office building energy consumption forecasting model with dynamically combined residual error correction based on the optimal model

Next One:A hybrid deep learning model based on Rime optimization and multi-head attention for cooling load prediction in public buildings