
Memo from Thomas Grumbly
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| Date: |
07-Sep-94 |
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| Reply to Attn of:: |
EM-263 (Carter: 301-427-1677) |
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| Subject: |
Institutionalizing the Data Quality Objectives Process for EM's Environmental Data Collection Activities |
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| To: |
Distribution
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To balance Department of Energy (DOE) environmental sampling and analysis costs with
the need for sound environmental data that address regulatory requirements and stakeholder concerns, the Department must implement approaches
to streamline procedures, minimize time requirements, and eliminate unnecessary costs associated with current environmental sampling and
analysis activities. Accordingly, it is the policy of the Office of Environmental Management (EM) to apply up-front planning, where practical,
to ensure safer, better, faster, and cheaper environmental sampling and analysis programs for all EM projects and operations. Specifically,
it is EM policy that the Data Quality Objectives (DQO) process be used in all environmental projects where there may be a need to collect
significant environmental data. The DQO process has already been adapted to site characterization and remediation in DOE's Streamlined Approach
for Environmental Restoration (SAFER) program. In addition, the Office of Waste Management is developing guidance to apply the DQO planning
process to efficiently define and integrate process knowledge information with sampling and analysis to streamline and expedite the activities
needed to meet regulatory requirements and public concerns. |
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* Waste Management
* Environmental Restoration
* Facility Transition and Management
* Decontamination and Decommissioning
* Technology Development
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Thomas P. Grumbly
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The DQO planning process consists of seven key steps:
Implementation of the DQO process forces data suppliers and data users to consider the following questions: |
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What decision has to be made ? |
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| * | What type and quality of data are required to support the decision? | ||||
| * | Why are new data needed for the decision ? | ||||
| * | How will new data be used to make the decision ? | ||||
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ATTACHMENT B DECIDING WHEN TO APPLY PROCESS KNOWLEDGE OR PERFORM SAMPLING AND ANALYSIS FOR WASTE CHARACTERIZATION -- EMPLOYING THE DATA QUALITY OBJECTIVES (DQO) PROCESS Efficient characterization of DOE's large number of waste streams relies on information obtained from process knowledge (PK), sampling and analysis (S&A), or from a combination of both. PK means applying knowledge of the hazard characteristic of the waste in light of the materials or the processes used (40 CFR 262.11(a)(2)). This would include knowledge about the origin, storage, use, and potential exposure of the waste material. For example, if the feed stocks for making a product are known, the likely range of chemical components in the waste streams can be predicted. This information may be sufficient to address regulatory concerns. To the extent applicable, using PK to characterize waste is more cost effective than S&A. What is needed is a logical approach to identify the sufficiency of PK to characterize a particular waste and what is the minimum amount of new S&A data necessary. The Data Quality Objectives (DQO) planning process focuses on these specific questions. DQO planning helps stakeholders decide what questions require characterization information and determine whether those questions can be answered by existing PK, if the PK must be supported by new S&A data, or if new data are required because PK is entirely inadequate. The first several steps of the DQO process help determine whether existing PK is adequate to characterize the waste. If PK is determined insufficient, the last few steps of the DQO process lay out the new data needs and optimize the S&A design. Attached is a flow chart illustrating the basic framework for applying DQO planning for waste characterization. First the issues and regulatory drivers that form the basis for the need to characterize a waste are identified. Then the questions, possible answers, and data needs for addressing those issues and drivers are formulated. Waste characterization issues and regulatory drivers may involve determining whether a waste stream meets treatment, storage, or disposal waste acceptance criteria. Questions to address these issues focus on whether PK satisfactorily determines the waste content. Questions about validity of PK may include how accurate is the knowledge of the waste generation process, can the waste be traced to the point of origin, has any significant degradation of the waste occurred, has anything been added to the waste, and has there been adequate QA/QC of the PK determination. Once questions and data needs are determined, relevant existing data are compiled. Existing data include both PK or S&A information already available. Existing data may be obtained from manifests of the subject waste or waste generated from areas or processes matching the subject waste, or from knowledge about the specific process that generated the waste. When all relevant existing information is compiled, it is evaluated to determine if it is sufficient to meet the data needs established during the first several steps of the DQO process. If existing information is sufficient, no further characterization should be required. If not, then new data are necessary, and a S&A plan based on the determined data needs should be designed.
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Program Manager, Dr Jeffrey W
Day, (509) 372-4629.
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