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Skill assessment for an operational algal bloom forecast system

机译:运作中的藻华预报系统的技能评估

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摘要

An operational forecast system for harmful algal blooms (HABs) in southwest Florida is analyzed for forecasting skill. The HABs, caused by the toxic dinoflagellate, Karenia brevis, lead to shellfish toxicity and to respiratory irritation. In addition to predicting new blooms and their extent, HAB forecasts are made twice weekly during a bloom event, using a combination of satellite derived image products, wind predictions, and a rule-based model derived from previous observations and research. These forecasts include: identification, intensification, transport, extent, and impact; the latter being the most significant to the public. Identification involves identifying new blooms as HABs and is validated against an operational monitoring program involving water sampling. Intensification forecasts, which are much less frequently made, can only be evaluated with satellite data on mono-specific blooms. Extent and transport forecasts of HABs are also evaluated against the water samples. Due to the resolution of the forecasts and available validation data, skill cannot be resolved at scales finer than 30 km. Initially, respiratory irritation forecasts were analyzed using anecdotal information, the only available data, which had a bias toward major respiratory events leading to a forecast accuracy exceeding 90%. When a systematic program of twice-daily observations from lifeguards was implemented, the forecast could be meaningfully assessed. The results show that the forecasts identify the occurrence of respiratory events at all lifeguard beaches 70% of the time. However, a high rate (80%) of false positive forecasts occurred at any given beach. As the forecasts were made at half to whole county level, the resolution of the validation data was reduced to county level, reducing false positives to 22% (accuracy of 78%). The study indicates the importance of systematic sampling, even when using qualitative descriptors, the use of validation resolution to evaluate forecast capabilities, and the need to match forecast and validation resolutions.
机译:分析了佛罗里达州西南部有害藻华(HAB)的运行预报系统的预报技能。由有毒的鞭毛藻(Karenia brevis)引起的HAB导致贝类毒性和呼吸道刺激。除了预测新的开花及其程度外,HAB预测在开花事件期间每周进行两次,结合使用卫星衍生的图像产品,风的预测以及从先前的观察和研究得到的基于规则的模型。这些预测包括:识别,集约化,运输,程度和影响;后者对公众最重要。识别包括将新的水华识别为HAB,并通过涉及水采样的运行监控程序进行验证。强度预报的频率要低得多,只能用关于单次开花的卫星数据进行评估。还对照水样评估了HAB的范围和运输预测。由于预报的分辨率和可用的验证数据,无法在30公里以下的尺度上解析技能。最初,呼吸刺激性预测是使用轶事信息进行分析的,而轶事信息是唯一可用的数据,该信息对重大呼吸事件有偏见,导致预测准确性超过90%。当实施一项系统的,每天两次的救生员观察计划时,可以对预测进行有意义的评估。结果表明,该预测可以确定70%的时间在所有救生员海滩出现呼吸事件。但是,在任何给定的海滩上都有很高的假阳性预测率(80%)。由于预测是在整个县范围内进行的,因此验证数据的分辨率降低到县范围,将误报率降低到22%(准确性为78%)。该研究表明,即使使用定性描述符,也必须进行系统抽样,使用验证分辨率评估预测能力,以及需要将预测和验证分辨率相匹配。

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