The untapped potential of human + artificial intelligence in environmental remediation
At a glance
Digital transformation has disrupted the way we work, helping businesses manage risk, reduce cost, and significantly increase efficiencies. Yet, in the environmental remediation space, traditional approaches to managing contaminated sites and portfolios have barely changed over the past 40-years.
Portfolios, a grouping of remediation sites that belong to the same organization, are generally managed project-by-project with analysis and decision-making based on data from a single site. They rely on the professional judgement and expertise of the project team. And, in many cases, little thought is given to how teams can apply the value of data across portfolios or utilize existing data from across the remediation industry.
Nonetheless, our clients face many challenges that AI can help address. These include:
- Complicated compliance processes with ever-changing regulatory landscapes
- Increased operational scrutiny due to the ESG movement
- No holistic portfolio understanding to drive decisions, due to lack operational siloes
- Increased need for knowledge retention due to staffing constraints like reduction in hiring pools and retirement of senior employees
- Organizational inefficiencies like lack of standardization and the use of high-cost employees for automatable tasks
To address these challenges, we are helping our clients build bridges between siloed operations (and thus data) within their organizations, leading to increased regulatory compliance, operational transparency, knowledge retention, and efficiency. Together, these are driving a paradigm shift from case-by-case analysis to holistic and data-driven decision-making. One example of this in action is the S3 Framework.
The S3 Framework: a holistic data-driven strategy
When it comes to portfolio management, most organizations focus on reducing risk and minimizing overall liability with the ultimate goal of receiving regulatory confirmation of site closure or no further action (NFA).
Strategies to reach the end goal vary across a portfolio. And, organizations typically have a limited annual budget for portfolio management, which needs to be used wisely to achieve the greatest reduction of potential liabilities.
GHD Digital’s patent-pending advanced analytics model, the S3 Framework, enables organizations to optimize the management of their portfolios through AI and ML on big datasets. The S3 Framework outlines the process to determine the overall risk of each site by considering three different data sets:
- Site: Both the physical location and the location-specific contamination risks. These are typical site data sets like contaminant concentration, geology, groundwater gradient and presence of preferential pathways.
- Surroundings: The risk drivers surrounding the site. For example, sensitive receptors, offsite sources and possible co-mingled plumes, zoning, or the amount of development in the surrounding area.
- Setting: Data that are mostly non-physical constraints affecting budget, timeline, and the required pathway to liability reduction and closure. This data could include several factors such as the regulatory criteria set by the state or site-specific regulations to progress toward closure, for example. Setting might also consider any regulator backlog of sites, the historic performance of how a regulator approved a site closure, the potential for or existing legal challenges, and much more.
Document mining unearths trapped data
To achieve the greatest benefit from the S3 Framework, we need large datasets with actionable data from the site, surrounding, and setting. However, much of the data required to create these datasets reside in documents not often readily available in centralized databases. By applying AI and ML through a practice called document mining, the process of structuring information from documents, we access and turn text and information into insightful data.
In many cases, site data are trapped in the form of reports, correspondences, and other visual outputs (e.g., Word and PDF documents). This data can include easy-to-recognize information, like tables or figures. However, there is also a need to gather and understand contextual data, such as the source of release, subsurface characteristics, and details of remedial alternatives.
Using document mining, we quickly understand distinct types of proposed or enacted remediation methods and potential options moving forward. Without analytics support, we would have to read thousands of individual documents and manually populate a vast table of attributes. Through AI and ML-enabled document mining, we can accomplish this task quickly and provide valuable insight and contextual details.
There is an extensive list of factors that might influence decisions around site remediation and overall portfolio management. Compounded by the significant number of datasets requiring comprehension – which are often disparate or disconnected – document mining increases our team’s efficiency in developing the most valuable datasets from the multitude of associated documentation.
Human plus machine (enhancement, not replacement)
By integrating the available digital technologies, we build efficiencies and make more informed data-driven decisions. It’s also incredibly important to understand the application of technology is only successful when augmenting or complementing human intelligence.
Digital technologies empower remediation and portfolio managers to be more informed, enabling more confidence and performance efficiency. So, instead of meeting the challenge of improving portfolio management with a ‘technology vs. human’ perspective, we use technology to amplify existing processes and outcomes.
Applying the S3 Framework enables remediation teams to strategically inject technology to create efficiencies, add new and innovative insights, achieve greater liability reduction with less money, and improve decision making.
To illuminate the most valuable insights for portfolio management, we must converge artificial and human intelligence. After all, the main goal of remediation is to improve health, safety, and the environment, while increasing the levels of trust and transparency with all responsible parties, stakeholders, and regulators. And, the best way to ensure we achieve this goal is by bringing together our team’s remediation knowledge, applying both document mining to unearth trapped data as well as AI and ML within the S3 Framework.
We are only at the beginning of what’s to come. The remediation industry is catching up to other industries in actualizing the benefits of data-driven thinking. The first step in this process is to illuminate what’s possible through new, digitally enabled ways of working. From there, we are only limited by our imaginations.