II.OVERALL STRUCTURE
The system is composed of 4 layers, and the overview structure is presented in the figure 1. The principle of the design stems from the idea “awareness, transmission, perception and usage”, a concept widely applicated in the in the field of public safety [9].
KEY TECHNOLOGIES
The realization of the system function requires the advancement in some fields: 1) Risk factors classification and multi-source heterogeneous data collecting and accessing: section 2.1 and 2.3 provide the solution and description; 2) Precise and accurate positioning and visualization of full risk factor: the function is much dependent on the deep integration of GIS, BIM and IoT. The detecting data and location of sensors provide the inputs for calculating and simulating tools of 3-dimentional GIS, while BIM presents the spatial settings and completes some constraint conditions. Utilizing the algorithm and tools embedded in the assessment model, the function of full risk factor visualization also covers correlation analysis, key performance indexes (KIP) analysis and so on. 3) Comprehensive situation awareness and joint response: the process takes account not only the risks sources themselves, but also the situation of neighboring space, which contributes to more considerate disposal procedures and resources mobilization, and detailedly illustrated in the two cases in section 4
APPLICATION CASES
The two use cases are the potential or expected use of the risk management system, which are preconceived ideas or now simulated in other software, such as ArcGIS, whose related function will be integrated into the system.
A.Pipeline
This case is based on ArcGIS, part involved function of which will be incorporate into risk management system. In this simulated scene, the pressure sensors detect the abnormality in pipeline parameters, and then the assessment system estimates the potential influence scope and the severity in the emergency. As show in figure 3, the graph of networks and the data of flaw and pressure can be present with different colors. Moreover, the prioritized protection areas are located based on the data of buildings and sensors embedded beforehand in BIM and GIS. The predicted consequences of the leakage itself along with the states of the neighboring space, determine the level of alarm, disposal procedures and the response team and resource to mobilize. For example, if there are mass gathering or important buildings, such as laboratories, examination rooms and so on, in the neighboring space, the alarm level is certainly higher than the situation that the perimeter zone is open area or similar states. In addition, the amount of leakage is undoubtedly positive correlated to the alarm level. Meanwhile the disposal forces are called together, according to the command issued on the mobile terminals, and then the state of the scene and the corresponding disposal instruction will be distributed with them. The graph of pipe networks, related parameters of the pipe, like flow and pressure etc., the neighboring facilities requiring attention and analogous information are included. When the emergency is handled, the states of all regions come back to the default state, with regular color presented. If the situation gets worse, for example, the leakage cannot be controlled or other secondary incidents come up, another disposal force is going to evacuate the people nearby. What’s more, there is a coordinate response mechanism to call on the more professional disposal team out of hospitals on the basis of the pre-arranged plan stored in the database.
B.Fire incident
The case of fire in a laboratory is a preconceived idea based on the function and strategy of the system. The sensors in the laboratory detect the smoke, and the critical parameter data, like the density and components of smog, are transferred to the analysis sector, through IoT monitoring gateway. The camera view and the simulated visual scene are presented in the central control room immediately. Meanwhile the system will estimate the existing combustible materials and explosive substance in terms of their destructive power, and the potential of being affected, considering distance to the incident location and other factors. The situation near the laboratory, including the gathering crowd, the high value and significant assets and equipments, the function of neighboring rooms and so on, is also to be taken into account, which is much dependent on the preset data in BIM and GIS. With such situation awareness, the system is able to ascertain the level of threat posed. As shown in the figure 5 and 6, the location of the fire is near the operating room, which contributes to improve warning level. The disposal force will receive the information in the emergency scene and corresponding precept. Site disposal and evacuation will be conducted according to the pre-arranged plan, for instance the patients in the operating room will be protected separately and wait for rescue, while most people will be evacuated. When the fire is put out, the system will display the states of the hospital to be normal. Moreover, the cause of fire and the process of the disposal are taken as the reference to adjust the pre-plan and daily management
CONCLUSION AND DISCUSSION
There is some informatoinized response mechanism in terms of some specific emergencies, such as fires, parameters deviation of boilers and pressure pipelines, human attack and so on, but they are distributed in different management system. The risk management system proposed in the paper aims construct one comprehensive system cover all possible emergencies in hospitals, with integration and adjustment of the existing ones and supply other parts. The risk management system will promote the ability of hospitals in risk detection, analysis, visualization and response decision-making based on the integration of IoT, BIM and GIS. The system architecture and function design were described respectively, and its application was illustrated through application cases in this paper. In the viewpoint of public safety, the assessment and management of these risks consist of identification and classification, real-time monitoring and estimation, consequence prediction and alertness and coordinate response. Undoubtedly, the informatoinized systematic management of the risk elements contributes to achieve the goal. The difficulties of later work concentrate on the recognition algorithm with regard to the different emergencies, and the standard of different alarm levels. The economic efficiency also needs to be taken into consideration, since the disposal measures for some emergencies can meet the safety requirement. In terms of these emergencies, our work is to make their record of the state of risk factors informatoinized.
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