Multiple gross errors detection in surveying measurements using statistical quality control

Joint Authors

Ibrahim, Ahmad Muhammad Mahmud
al-Ghazuli, Badriyah A. Gissmalla

Source

Journal of Science and Technology

Issue

Vol. 13, Issue 1 (30 Jun. 2012), pp.36-47, 12 p.

Publisher

Sudan University of Science and Technology Deanship of Scientific Research

Publication Date

2012-06-30

Country of Publication

Sudan

No. of Pages

12

Main Subjects

Engineering & Technology Sciences (Multidisciplinary)

Topics

Abstract AR

كثير من المهام المساحية تتطلب الحصول على القياسات و تحليلها.

تخضع تلك القياسات للأخطاء الجسيمة، المنتظمة و العشوائية.

عمليا هنالك أرصادات زائدة من أجل الوصول إلى قيم مضبوطة و المساعدة في اكتشاف الأخطاء.

في التحليل النوعي و التحليل الإحصائي من أجل الجودة، عادة ما يفترض أن القياسات تحتوى على أخطاء عشوائية فقط و اعتبارها متغيرات عشوائية.

في الحقيقة تلك القياسات يمكن أن تحتوى على أخطاء جسيمة با الاضافه إلى أخطاء منتظمة.

تأثير هذه الأخطاء يتوزع على الأخطاء المتبقية بعد إجراء عملية الضبط مما تؤدى بدورها إلى إثارة الأسئلة حول نتائجها و تفسيرها.

Abstract EN

Most of the surveying tasks involve the acquisition and analysis of measurements.

Such measurements are subject to random, systematic and gross errors.

In practice, redundant measurements are made to provide quality control and errors check.

In qualitative analysis and statistical evaluation, it is generally assumed that the measurements contain only random errors and are regarded as random variables.

In reality, the measurements may contain gross And / or systematic errors.

The effects of such errors are distributed over the residuals, after an adjustment and lead to questionable results and interpretation. For high precision applications, gross and systematic errors need to be detected prior to the analysis.

These errors should be tackled before the adjustment by means of screening.

These few remaining gross errors in the measurements can be detected after the adjustment.

These adjustment methods assume the presence of only one gross error.

One of the most effective methods that can be used in detecting multiple gross errors is the statistical quality control method.

Statistical quality control is a technique used to monitor a procedure with a goal of making it more efficient and ensures precise results. Statistical control charts are used to provide an operational definition of a special cause for a given set of data.

It is possible to construct multiples of sigma control limits.

When all the points on a control chart are within a multiple of sigma control limits and there are no gross errors in the data, the process of measurements is said to be in a state of statistical control. Otherwise, the data indicate the presence of non-random gross errors.

In this research work, different methods of statistical quality control were used.

Results showed that statistical quality control method can be used successfully and efficiently in detecting multiple gross errors.

American Psychological Association (APA)

al-Ghazuli, Badriyah A. Gissmalla& Ibrahim, Ahmad Muhammad Mahmud. 2012. Multiple gross errors detection in surveying measurements using statistical quality control. Journal of Science and Technology،Vol. 13, no. 1, pp.36-47.
https://search.emarefa.net/detail/BIM-312311

Modern Language Association (MLA)

al-Ghazuli, Badriyah A. Gissmalla& Ibrahim, Ahmad Muhammad Mahmud. Multiple gross errors detection in surveying measurements using statistical quality control. Journal of Science and Technology Vol. 13, no. 1 (2012), pp.36-47.
https://search.emarefa.net/detail/BIM-312311

American Medical Association (AMA)

al-Ghazuli, Badriyah A. Gissmalla& Ibrahim, Ahmad Muhammad Mahmud. Multiple gross errors detection in surveying measurements using statistical quality control. Journal of Science and Technology. 2012. Vol. 13, no. 1, pp.36-47.
https://search.emarefa.net/detail/BIM-312311

Data Type

Journal Articles

Language

English

Notes

Includes bibliographical references : p. 46-47

Record ID

BIM-312311