On initial data in adjustments of the geometric levelling networks (on the mean of paired observations)

IF 0.9 Q4 REMOTE SENSING
Vasil Cvetkov
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引用次数: 0

Abstract

There are many systematic errors in the precise levelling measurements. The most of them we have studied and their impact on the final accuracy of levelling is solved by appropriate corrections. The main objective of the current article is to reveal the greatest systematic error in the processing of levelling data, i.e., the use of only the averages of the fore and the back measurements of the elevations in levelling lines as initial data in the adjustment of the highest order levelling networks. Regardless of the type of distribution, simulations of random paired samples reveal that the averages of each pair only up to 33% of all cases are more closely located to the known theoretical expectation with respect to their parents. This fact implies that the collected data are not processed in the best way. In order not to lose information, we adjusted a reduced network of the Third Precise Levelling of Finland network in all possible combinations by the use of the fore, the back, and the mean of each line elevation. As a result, the final accuracy increases more than 10 times in comparison to an adjustment with the use of the averages only.
关于几何找平网络调整的初始数据(关于配对观测的平均值)
精确水准测量中存在许多系统误差。我们已对其中大部分误差进行了研究,并通过适当的修正解决了它们对水准测量最终精度的影响。本文的主要目的是揭示水准测量数据处理中最大的系统误差,即在调整最高阶水准测量网络时,仅使用水准测量线高程的前后测量平均值作为初始数据。无论分布类型如何,随机配对样本的模拟结果表明,每对样本的平均值最多只有 33% 的情况更接近于已知的理论期望值。这意味着收集到的数据没有得到最佳处理。为了不丢失信息,我们在所有可能的组合中,通过使用每条线高程的前、后和平均值,对芬兰第三次精确水准测量网络的缩小网络进行了调整。因此,与仅使用平均值进行调整相比,最终精度提高了 10 倍以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Geodetic Science
Journal of Geodetic Science REMOTE SENSING-
CiteScore
1.90
自引率
7.70%
发文量
3
审稿时长
14 weeks
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