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Using maintenance records from a long-term sensor monitoring network to evaluate the relationship between maintenance schedule and data quality

机译:使用来自长期传感器监控网络的维护记录来评估维护计划与数据质量之间的关系

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Sensor-based environmental monitoring networks are beginning to provide the large-scale, long-term data required to address important fundamental and applied questions in ecology. However, the data quality from deployed sensors can be difficult and costly to ensure. In this study, we use maintenance records from the 12-year history of Louisiana's Coastwide Reference Monitoring System (CRMS) to assess the relationship between various dimensions of data quality and the frequency of field visits to the sensors. We use hierarchical Bayesian models to estimate the probability of missing data, the probability that a corrective offset of the sensor is required, and the magnitude of required offsets for water elevation and salinity data. We compared these estimates to predetermined risk thresholds to the help identify maintenance schedules that balanced the efficient use of labor resources without sacrificing data quality. We found that the relationship between data quality and increasing maintenance interval varied across metrics. Additionally, for most metrics, the maintenance interval when the metric's credible interval and risk threshold intersected varied throughout the year and with wetland type. These results suggest that complex maintenance schedules, in which field visits vary in frequency throughout the year and with environmental context, are likely to provide the best tradeoff between labor cost and data quality. This analysis demonstrates that quantitative assessment of maintenance records can positively impact the sustainability of long-term data collection projects by helping identify new potential efficiencies in monitoring program management.
机译:基于传感器的环境监测网络开始提供解决生态学中重要的基础和应用问题所需的大规模长期数据。然而,来自部署的传感器的数据质量可能难以确保并且成本很高。在这项研究中,我们使用路易斯安那州海岸参考监测系统(CRMS)12年历史中的维护记录来评估数据质量的各个维度与对传感器进行实地考察的频率之间的关系。我们使用分层贝叶斯模型来估计丢失数据的概率,需要传感器的校正偏移的概率以及水位和盐度数据所需偏移的大小。我们将这些估计值与预定的风险阈值进行了比较,以帮助确定可以在不牺牲数据质量的情况下平衡有效利用劳动力资源的维护计划。我们发现,数据质量与维护间隔的延长之间的关系因指标而异。此外,对于大多数度量标准而言,该度量标准的可信间隔和风险阈值相交时的维护间隔全年不同,且随湿地类型的不同而不同。这些结果表明,复杂的维护计划可能会在劳动力成本和数据质量之间提供最佳折衷,在这种维护计划中,全年的访问频率和环境会有所不同。该分析表明,对维护记录的定量评估可以帮助确定监视计划管理的新潜在效率,从而对长期数据收集项目的可持续性产生积极影响。

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