Designing a Borehole Review and Approval Workflow

Borehole review and approval workflow showing data entry, validation, technical review, revision cycles, and final approval stages for geological and environmental QA/QC processes.
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Borehole data is one of the most valuable assets in environmental, geotechnical, mining, hydrogeological, and geological projects. The quality of this data directly affects engineering decisions, regulatory compliance, risk assessments, and project outcomes. While data validation tools can identify many errors, an effective borehole quality assurance and quality control (QA/QC) process requires much more than automated checks.

A well-designed borehole review and approval workflow ensures that data progresses through structured stages before it becomes part of the official project record. By implementing clear entry, validation, review, approval, and revision processes, organizations can improve data quality, increase accountability, and reduce project risk.

This article explores the key components of a robust borehole review and approval workflow and provides guidance for designing a process that supports both efficiency and data integrity.

Why a Formal Workflow Matters

Many organizations still rely on informal review processes involving spreadsheets, email exchanges, and manual sign-offs. While these approaches may work for small projects, they become increasingly difficult to manage as project complexity grows.

Without a formal workflow, common problems include:

  • Inconsistent data quality
  • Missing review records
  • Unclear ownership and responsibility
  • Duplicate corrections
  • Regulatory compliance risks
  • Delays in reporting and project delivery

A structured workflow creates transparency and ensures every borehole record follows the same quality control path before being used in analyses, models, reports, or regulatory submissions.

Stage 1: Data Entry

The workflow begins with data entry.

Borehole information may originate from various sources, including:

  • Field logging software
  • Drilling contractors
  • Laboratory reports
  • Historical databases
  • Geological logging systems
  • Manual data entry forms

At this stage, the primary objective is to capture data accurately and completely.

Typical information entered includes:

  • Borehole identifiers
  • Coordinates and elevations
  • Drilling methods
  • Lithology descriptions
  • Sample intervals
  • Groundwater measurements
  • Laboratory results
  • Construction details
  • Monitoring well information

Best Practices for Data Entry

Organizations should establish standardized templates and controlled vocabularies to reduce inconsistencies.

Examples include:

  • Standard lithology codes
  • Consistent unit systems
  • Dropdown lists for classifications
  • Mandatory fields
  • Controlled terminology

Data entry systems should also track:

  • Entry date
  • User information
  • Data source
  • Project association

Maintaining this metadata creates an audit trail that supports future reviews and investigations.

Workflow Status: Draft

Newly entered records should initially receive a Draft status.

Draft records are not yet considered verified and should not be used in official reports or analyses until they progress through subsequent workflow stages.

Stage 2: Automated Validation

Once data has been entered, the next step is automated validation.

Validation identifies errors, omissions, and inconsistencies before human reviewers spend time examining records.

Automated validation rules can evaluate:

Required Fields

Examples:

  • Missing borehole ID
  • Missing coordinates
  • Missing ground elevation
  • Missing drilling dates

Range Checks

Examples:

  • Negative depths
  • Invalid elevations
  • Impossible groundwater levels
  • Laboratory values outside expected limits

Logical Consistency Checks

Examples:

  • Total depth less than sample depth
  • Screen interval below borehole depth
  • End date before start date
  • Sample interval overlap

Cross-Dataset Validation

Examples:

  • Laboratory sample IDs not matching field samples
  • Water levels inconsistent with borehole construction
  • Coordinates outside project boundaries
  • Lithology intervals containing gaps

Validation Severity Levels

Many organizations categorize validation results according to severity:

Error

  • Must be corrected before proceeding.

Warning

  • Potential issue requiring review.

Information

  • Unusual condition that may be acceptable.

This distinction helps reviewers focus on issues that present the greatest risk.

Workflow Status: Validation Failed or Validation Passed

Records containing critical errors remain in a Validation Failed state until corrections are made.

Records passing validation advance to the review stage.

Automated validation significantly reduces reviewer workload by catching routine issues early in the workflow.

Stage 3: Technical Review

Validation identifies rule-based issues, but it cannot replace professional judgment.

The review stage introduces expert evaluation by qualified personnel.

Reviewers may include:

  • Geologists
  • Hydrogeologists
  • Environmental scientists
  • Geotechnical engineers
  • Senior data managers

The purpose of review is to assess whether the data makes technical and contextual sense.

Review Activities

Reviewers commonly evaluate:

Geological Consistency

Examples:

  • Stratigraphy follows expected regional patterns.
  • Lithologic transitions appear reasonable.
  • Rock descriptions match core observations.

Hydrogeological Interpretation

Examples:

  • Water levels are realistic.
  • Hydraulic test results are reasonable.
  • Aquifer interpretations are supported by evidence.

Sampling Completeness

Examples:

  • Required samples were collected.
  • Laboratory results are complete.
  • Quality control samples are present.

Documentation Quality

Examples:

  • Comments are adequate.
  • Supporting attachments exist.
  • Field notes are available.

Reviewer Comments

An effective workflow allows reviewers to document observations and concerns.

Comments should include:

  • Issue description
  • Recommended correction
  • Reviewer identity
  • Date and time

Maintaining these records provides accountability and historical traceability.

Workflow Status: Under Review

During review, records should be locked from unauthorized modification while still allowing reviewers to document findings.

This prevents changes from occurring simultaneously with the review process.

Stage 4: Revision Cycles

Few borehole datasets pass review without requiring some level of correction.

The revision cycle is a critical component of any workflow.

When issues are identified, records should be returned to the responsible individual for correction.

Common Revision Requests

Examples include:

  • Correcting coordinates
  • Updating lithology descriptions
  • Adding missing intervals
  • Resolving validation warnings
  • Clarifying groundwater measurements
  • Uploading missing documentation

Controlled Revisions

A robust system should:

  • Track every revision
  • Preserve previous versions
  • Record who made changes
  • Capture timestamps
  • Maintain reviewer comments

Version control is essential because it allows organizations to reconstruct the history of a record and demonstrate compliance during audits or regulatory reviews.

Iterative Improvement

Multiple review and revision cycles may occur before approval.

The workflow should support:

  1. Review
  2. Revision
  3. Re-validation
  4. Re-review
  5. Approval

This iterative process gradually improves data quality while maintaining a complete audit trail.

Workflow Status: Revision Required

Records returned for correction should receive a Revision Required status.

This clearly communicates that additional work is needed before approval can occur.

Stage 5: Final Approval

Approval represents the formal acceptance of a borehole record.

At this stage, the organization confirms that:

  • Validation checks have passed
  • Technical reviews are complete
  • Required corrections have been addressed
  • Supporting documentation exists
  • Quality standards have been met

Approval Authority

Approval should be performed by designated personnel such as:

  • Senior geologists
  • Project managers
  • Data managers
  • Technical leads
  • Regulatory coordinators

The approving individual assumes responsibility for confirming that the data is suitable for project use.

Approval Records

Approval actions should capture:

  • Approver name
  • Approval date
  • Approval comments
  • Workflow status
  • Version number

These records become part of the permanent project history.

Workflow Status: Approved

Once approved, records become official project data.

Organizations often restrict editing of approved records to prevent accidental modifications.

If changes are required later, a formal revision process should reopen the workflow rather than allowing direct edits.

A typical borehole workflow may follow the following progression:

  1. Draft
  2. Validation Pending
  3. Validation Failed
  4. Validation Passed
  5. Under Review
  6. Revision Required
  7. Re-Submitted
  8. Approved
  9. Archived

This structure provides clear visibility into the current status of every borehole within a project.

Key Features of an Effective Workflow System

When implementing a borehole review and approval workflow, organizations should consider features such as:

Role-Based Permissions

Different users should have different responsibilities.

Examples:

  • Data Entry Personnel
  • Reviewers
  • Approvers
  • Administrators

Audit Trails

Every action should be recorded, including:

  • Data changes
  • Workflow transitions
  • Review comments
  • Approval actions

Automated Notifications

Notifications can inform users when:

  • Validation fails
  • Reviews are assigned
  • Revisions are requested
  • Approvals are completed

Dashboard Reporting

Project dashboards can display:

  • Boreholes awaiting review
  • Validation error counts
  • Approval progress
  • Data completeness metrics
  • Workflow bottlenecks

These metrics help project managers monitor quality and schedule performance.

Conclusion

A borehole review and approval workflow provides the framework needed to transform raw field data into trusted project information. By combining structured data entry, automated validation, expert review, controlled revision cycles, and formal approval processes, organizations can significantly improve data quality while maintaining complete traceability.

As regulatory requirements grow and projects become increasingly data-driven, a documented and repeatable workflow is no longer optional. It is a fundamental component of modern borehole QA/QC programs. Organizations that invest in robust review and approval processes reduce risk, improve confidence in their datasets, and establish a solid foundation for better technical and business decisions.


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