Data and Information Is Collected Based on Tools Prepared: A Comprehensive Engineering Guide

In the wastewater infrastructure design process, the systematic collection of data and information is the critical link between preparation and analysis. As outlined in the competency standard “Design Wastewater Collection and Treatment Infrastructure” (Unit Code: CON/OS/CET/CR/09/6A), data and information is collected based on tools prepared—a principle that ensures the data gathering phase is executed efficiently, consistently, and in alignment with the specific information requirements identified during tool preparation. When data and information is collected based on tools prepared, the integrity of the entire design process is maintained .

This comprehensive guide explores how data and information is collected based on tools prepared, examining the types of data collected, field execution methods, quality assurance procedures, and practical considerations for effective data collection in wastewater infrastructure projects.


1. Understanding the Data Collection Process

1.1 The Role of Prepared Tools

The tools prepared during the earlier phase directly determine the efficiency, accuracy, and completeness of data collection. When data and information is collected based on tools prepared, the process follows a structured workflow:

StageActivityPurpose
DeploymentInstall and configure monitoring equipmentEstablish data collection points
Data AcquisitionExecute field measurements and sample collectionGather raw data
Data ValidationPerform field checks and quality assuranceEnsure data integrity
Data StorageRecord and secure collected dataEnable analysis

Water companies and public authorities require “the accurate, high-resolution data needed to plan infrastructure, optimise treatment capacity, and meet regulatory requirements,” making proper collection essential .

1.2 Information Hierarchy in Infrastructure Design

Data collection must be executed according to the hierarchy of information needs:

Data Collection PhasePrimary PurposeInformation Required
PreparednessEstablish baseline understandingBaseline indicators, risk analysis, capacity mapping
Needs AssessmentUnderstand severity, scale, prioritiesPrimary assessment data, population figures, WASH insecurity analysis
Strategic PlanningDefine targets and response prioritiesPopulation in need, severity categorization
ImplementationTrack operational deliveryActivity reporting, people targeted and reached
Quality AssessmentAssess effectiveness and accountabilityPost-distribution monitoring, feedback data

2. Types of Data Collected

2.1 Primary Data Collection

When data and information is collected based on tools prepared, the data collection process follows the specific tools and methods identified during preparation. Field surveys and onsite observations are primary methods for collecting original data .

Field Measurements and Observations:

The study employed both primary and secondary data sources :

Data CategoryDescriptionSources
Topographic InformationElevation profiles, slope gradients, drainage characteristicsCity Council records; Satellite Imagery
Sanitation InfrastructureType, distribution, condition of existing facilitiesUtility Reports; Field Surveys
Demographic DataPopulation density, household size, urban growth patternsNational Statistics Bureaus
Wastewater QualityBOD₅, COD, TSS, nitrogen, phosphorus levelsField sampling; laboratory analysis
Soil and Land UseSoil classification, infiltration capacity, land-use zoningMinistry records; Field Observations
Climatic ConditionsRainfall patterns, temperature, evapotranspirationMeteorological Authorities
Stakeholder PerspectivesCommunity perceptions, local knowledge, challengesInterviews; Community Meetings

2.2 Secondary Data Collection

Secondary data is derived from institutional records, technical reports, and peer-reviewed literature :

  • Institutional Records: Utility reports, government databases
  • Technical Reports: Engineering studies, regulatory filings
  • Geospatial Data: GIS, satellite imagery, maps
  • Peer-Reviewed Literature: Academic studies, research papers

3. Field Execution: Implementing Data Collection

3.1 Feasibility Assessment and Scoping

Before deployment, a detailed assessment is conducted to understand project goals, whether it is asset planning, compliance monitoring, growth forecasting, or event-based catchment assessment. This stage includes consideration of rainfall dependency, seasonal variability, flow balance needs, and access requirements .

When data and information is collected based on tools prepared, the feasibility assessment ensures the selected tools are appropriate for site conditions.

3.2 Equipment Deployment

MCERTS-certified equipment is deployed to collect high-accuracy flow and quality data across multiple points :

  • Ultrasonic or Doppler flow meters for flow velocity and depth measurement
  • Level sensors for water level monitoring
  • Rain gauges for precipitation measurement
  • Refrigerated auto-samplers for 24-hour composite sampling

Equipment is installed with robust mounting, battery/solar options, and remote telemetry where needed, ensuring minimal disruption and maximum data integrity .

Real-Time Data Collection Example:

Flow monitoring for sanitary sewer systems has evolved significantly. In recent years, wastewater engineers benefit from digital and wireless communication outputs from flow meters, integration with SCADA systems, and other IoT automation to perform short and long-term monitoring. This constant data collection allows users to establish a control point and then compare data from inclement weather events and determine outliers for further investigation .

3.3 Flow Monitoring Execution

When data and information is collected based on tools prepared, both dry and wet weather flows are monitored using time- or event-based strategies :

Flow TypeMonitoring StrategyData Collected
Dry Weather Flow (DWF)Continuous monitoringDiurnal patterns, baseline flow
Wet Weather FlowEvent-based monitoringStorm responses, peak flows
Storm Overflow VolumesEvent monitoringOverflow frequency, volume
Infiltration ContributionsContinuous monitoringI&I quantification

Monitoring durations can range from a few weeks to several months depending on regulatory drivers or planning needs .

3.4 Load Monitoring and Composite Sampling

To calculate pollutant loading, auto-samplers collect 24-hour composite samples representative of flow variations :

  • Samples collected automatically at pre-set intervals
  • Composite samples represent average conditions over 24 hours
  • Refrigerated storage preserves sample integrity

Composite samples are analyzed by UKAS-accredited laboratories for :

  • BOD (Biological Oxygen Demand)
  • COD (Chemical Oxygen Demand)
  • Ammonia
  • Total Suspended Solids (TSS)
  • Total Phosphorus and Nitrogen
  • pH, conductivity, temperature
  • Site-specific or consented parameters

3.5 Field Data Acquisition Examples

Example: Industrial Wastewater Data Collection

Based on agreements between factory owners and project teams, field measurements and sampling are conducted at industrial facilities. The field measurements and sampling started on a biweekly basis, with some exceptions (e.g., monthly sampling in some industrial areas). Wastewater sampling was stopped during certain periods, resumed later, and completed within the scheduled timeframe .

Example: Water Quality Data Acquisition

Data was acquired using specialized equipment including :

  • Thermometer
  • pH Meter
  • EC Meter
  • DO Meter
  • Filtration Assembly
  • Analytical Balance
  • Oven
  • Imhoff Cone
  • Hach UV-Vis Spectrophotometer
  • BOD Measurement System
  • BOD Incubator

Example: Greywater Data Collection

In a rural household study, samples were collected once weekly from each treatment section :

  • Sample containers: Sterile 500 ml glass bottles (microbiological analysis) and 1000 ml plastic bottles (physico-chemical analyses)
  • Field measurements: pH, electrical conductivity, temperature, dissolved oxygen using portable meters
  • Laboratory analysis: BOD₅, COD, suspended solids, nitrate, ammonium, orthophosphate per Standard Methods
  • Microbiological analysis: Fecal coliforms, E. coli, enterococci using spread plate method

4. Innovative Data Collection Technologies

4.1 Intelligent Water Infrastructure Technology

The Water Infrastructure Modernization Act of 2025 defines intelligent water infrastructure technology as technologies that rely on :

  • The use of real-time monitoring, management, analytics, and data collection tools
  • Embedded intelligence and predictive maintenance capabilities
  • Real-time remote sensors that provide continuous monitoring of water quality
  • Artificial intelligence and other intelligent optimization tools

Key Technology Categories:

Technology TypeApplicationData Collected
Real-time Remote SensorsContinuous water quality monitoringAcoustic signals, pressure transients, water quality, water flow 
Advanced Metering InfrastructureEnd-user conservationMeter data analytics and ratepayer technology 
Predictive and Diagnostic ToolsInformed decisionmakingPipe integrity data, leak detection, gas pockets 
AI-powered AnalyticsDefect classificationCCTV footage processing, defect identification 

4.2 CCTV and AI-Powered Inspection

In Edmonton, the CCTV inspection program has evolved to include automated defect classification based on PACP (Pipeline Assessment Certification Program) standards. An AI-powered video analytics system processes the footage, frame by frame, to identify and categorize potential defects such as cracks, root intrusions, and other defects .

When data and information is collected based on tools prepared, AI-enhanced tools enable:

  • Automated defect classification: Reduces human fatigue and variation
  • Faster processing: Identifies critical defects quickly
  • Standardized reporting: Consistent assessment across projects

4.3 Digital Twins and Operational Analytics

Autodesk Info360 Insight is a cloud-based digital twin solution for operational analytics, incident management, and compliance reporting. It enables :

  • Automated data collection, cleansing, and consolidation
  • Selection of desired sensors mapped onto a prebuilt digital workspace
  • Accelerated start-up time and collaborative expertise application
  • Quick identification of affected customers during incidents
  • Automated calculation and formatting tools for regulatory agencies 

4.4 Free-Floating Sensor Systems

ADS FlowSIGHT by Subterra is a programmatic monitoring solution that uses untethered, free-floating Scouts in critical sewers to collect vital data. The data is then screened for critical defects and inventory reconciliation that are reported back to the asset owner. Repeat deployments are compared to measure change and assist in more informed decision-making .

How it works:

  1. Deploy & Collect: ADS deploys untethered, free-floating Scouts
  2. Screen & Report: Data is screened for critical defects
  3. Compare & Prioritize: Repeat deployments are compared to measure change

5. Data Quality Assurance and Validation

5.1 Field Quality Assurance

When data and information is collected based on tools prepared, quality assurance procedures are implemented during collection:

Sensor Drift Checks:

Calibration Verification:

Cross-Verification:

5.2 Laboratory Quality Assurance

All analysis follows standard methods and quality assurance procedures, with full traceability and chain-of-custody documentation provided. This ensures results are reliable, repeatable, and meet the requirements of regulatory bodies and investment cases .

Laboratory Quality Requirements:

  • UKAS-accredited laboratories
  • Standard methods (Clesceri et al., 1999) 
  • Quality assurance procedures
  • Full traceability
  • Chain-of-custody documentation

5.3 Data Validation

Detailed data validation ensures the integrity of results, including :

  • Sensor drift checks
  • Cross-verification of flow and rainfall data
  • Statistical assessment of anomalies
  • QA procedures aligned to MCERTS and WRc guidance

Regulatory Readiness:

The goal is to ensure the data is regulator-ready and robust for planning purposes .


6. Regulatory Reporting and Documentation

6.1 Data Documentation

Data is provided in structured reports aligned to regulatory expectations and water company templates :

  • Summary of monitoring approach
  • Flow/load data tables
  • Observations and anomalies
  • Flow balance and performance analysis
  • Recommendations for further action

6.2 Chain of Custody

When data and information is collected based on tools prepared, proper chain of custody is maintained :

  • Sample collection documentation
  • Transport and storage records
  • Laboratory receipt confirmation
  • Analysis results traceability

7. Conclusion

The collection of data and information based on prepared tools is a systematic process that translates planning into action. When data and information is collected based on tools prepared, the data gathering phase is executed efficiently, consistently, and in alignment with the specific information requirements.

Key takeaways for engineering practice:

  1. Follow the prepared tools—deploy equipment according to the established plan
  2. Execute field measurements systematically—use standard methods and protocols
  3. Implement quality assurance—perform field checks and validation
  4. Document thoroughly—maintain chain of custody and data records
  5. Integrate innovative technologies—AI, digital twins, and sensors enhance data collection

By executing data collection based on prepared tools, engineers can gather the critical data needed to design wastewater infrastructure that is safe, compliant, and sustainable.

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