Skip to Main Content
Article navigation
Purpose

Insufficient attention to the building’s structural safety conditions has led to loss of life and property as well as disastrous social impacts. Although some countries or regions have developed building structural safety management policies, they seem to lack a solid decision-making basis and efficiency. To address this, this paper aims to establish a data-driven framework to achieve the economic, efficient and accurate management of building structural safety.

Design/methodology/approach

This paper proposes a novel framework for hierarchical management of building structural safety using machine learning approaches. A case study in Chongqing, China, is adopted to demonstrate its application and prove its feasibility. The framework considers the database, prediction of structural safety, hierarchical management and iteration.

Findings

The results indicate the effectiveness of the proposed framework, which facilitates the prediction of an existing building’s safety condition using limited fundamental information, allowing for the design of hierarchical management that encompasses structure, mechanisms and management measures. Furthermore, iteration mechanisms introduced allow for continuous improvement and adaptation over time.

Practical implications

By introducing this framework, hierarchical management actions could be taken to distinguished buildings, optimizing resource allocation and enhancing the effectiveness of engineering decision-making for maintenance. This proposed framework also offers practical guidance for decisions regarding new building construction.

Originality/value

The proposed framework provides valuable insights for research and practice in intelligent and cost-effective hierarchical management of structural safety for buildings and contributes to urban renewal.

Licensed re-use rights only
You do not currently have access to this content.
Don't already have an account? Register

Purchased this content as a guest? Enter your email address to restore access.

Please enter valid email address.
Email address must be 94 characters or fewer.
Pay-Per-View Access
$41.00
Rental

or Create an Account

Close Modal
Close Modal

Gift article access

As a benefit of your subscription, you can share temporary access to restricted articles.

Each link will stop working after 30 days or 10 uses. You may create up to 10 links in a 30 day period.

Please sign in to your personal account to gift article access.

Register

Gift article access

As a benefit of your subscription, you can share temporary access to restricted articles.

Each link will stop working after 30 days or 10 uses. You may create up to 10 links in a 30 day period.

Gift articles remaining: --

Gift article access

Each link will stop working after 30 days or 10 uses. You may create up to 10 links in a 30 day period.

Gift articles remaining: --

Gift article access

As a benefit of your subscription, you can share temporary access to restricted articles.

Each link will stop working after 30 days or 10 uses.

You have reached the limit of 10 links within a 30 day period.