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AF5.2 L1-2 Consideration of errors anomalies

AF5.2 L1-2 Consideration of errors anomalies. AF5.2 L2-3 Consideration of errors anomalies. AF5.2 L3-4 Consideration of errors anomalies. AF5.2 L4-5 Consideration of errors anomalies. Recognise data that does not fit a pattern or trend Use the term ‘anomalous result’ correctly

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AF5.2 L1-2 Consideration of errors anomalies

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  1. AF5.2 L1-2 Consideration of errors anomalies

  2. AF5.2 L2-3 Consideration of errors anomalies

  3. AF5.2 L3-4 Consideration of errors anomalies

  4. AF5.2 L4-5 Consideration of errors anomalies Recognise data that does not fit a pattern or trend Use the term ‘anomalous result’ correctly Recognise anomalous results in tables, charts and graphs Decide whether data matches predictions made

  5. AF5.2 L5-6 Consideration of errors anomalies Explain any anomalous results using scientific knowledge and understanding Explain how repeating results can lead to the identification of anomalous results Explain why results might be different from your prediction

  6. AF5.2 L6-7 Consideration of errors anomalies Consider how anomalies may impact on the conclusion Plot raw data as well as mean values on graphs to demonstrate spread Comment on the spread of data in terms of accuracy and precision

  7. AF5.2 L7-8 Consideration of errors anomalies Offer a scientific explanation for unexpected data Reduce the effect of random error through discounting or re-measuring anomalies Identify systematic error through collaborative working

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