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基于塞奇深度的长期趋势对东京大都市区沿海地区富营养化趋势的研究

Eutrophication trends in the coastal region of the Great Tokyo area based on long-term trends of Secchi depth.

机构信息

Kanagawa Prefectural Fisheries Technology Center, Miura, Kanagawa, Japan.

Graduate School of Agricultural and Life Sciences, University of Tokyo, Tokyo, Japan.

出版信息

PeerJ. 2023 Jul 28;11:e15764. doi: 10.7717/peerj.15764. eCollection 2023.

Abstract

BACKGROUND

The coastal ocean's environment has changed owing to human activity, with eutrophication becoming a global concern. However, oligotrophication occurs locally and decreases fish production. Historically, the Secchi depth has been used as an index of primary productivity. We analyzed the results of over-a-half-century routine observations conducted in Sagami Bay and Tokyo Bay to verify the eutrophication/oligotrophication trend based on Secchi depth observations in a temperate coastal region near the Greater Tokyo area, which is highly affected by human activities.

METHODS

Data recorded in the Kanagawa Prefecture from 1963 to 2018 were used in this study. After quality control, the observation area was divided into Tokyo Bay, the Uraga Channel (outer part of Tokyo Bay), Sagami Bay (northern part), and Sagami Nada (southern part of Sagami Bay) based on temperature and salinity at a depth of 10 m. Because the environmental parameters showed autocorrelation, time-series and correlation analyses were conducted using generalized least squares (GLS) models with a Prais-Winsten estimator.

RESULTS

The Secchi depth was the shallowest in Tokyo Bay, followed by the Uraga Channel, Sagami Bay, and Sagami Nada, and was deep in winter (December and January), and shallow in summer (July) in all regions. The correlated analyses using the GLS model indicated that the shallowing of Secchi depth was significantly associated with decreases in temperature, salinity, and phosphate concentration. However, time-series analyses using GLS models indicated that the Secchi depth was significantly shallower, except in Tokyo Bay, where the surface temperature was significantly warming and the surface phosphate and nitrite concentrations decreased everywhere. A significant shallowing trend of the Secchi depth was mostly observed during the light-limiting season (January-March).

DISCUSSION

Correlation analyses suggested the importance of horizontal advective transport, particularly from Tokyo Bay, which has cold and less saline eutrophic water. However, long-term shallowing of the Secchi depth was associated with warming, and changes in salinity were not significant in most months when the Secchi depth trend was significant. Thus, horizontal advection is not the primary cause of long-term eutrophication. Because the eutrophication trend was primarily observed in winter, when light is the major limiting factor of primary production, we concluded that warming provides a better photoenvironment for phytoplankton growth and induces eutrophication. As a decline in anthropogenic nutrient input after 1990s was reported in the investigated area, the long-term eutrophication trend was most likely caused due to global warming, which is another alarming impact resulting from human activities.

摘要

背景

由于人类活动,沿海海洋环境发生了变化,富营养化成为全球关注的问题。然而,局部贫营养化会降低鱼类产量。历史上,用透明度作为初级生产力的指标。我们分析了在大东京地区附近受人类活动影响较大的温带沿海地区,对相模湾和东京湾进行了半个多世纪的常规观测的结果,以验证基于透明度观测的富营养化/贫营养化趋势。

方法

本研究使用了 1963 年至 2018 年在神奈川县记录的数据。经过质量控制后,根据 10 米深处的温度和盐度,将观测区域分为东京湾、浦贺水道(东京湾外)、相模湾(北部)和相模滩(相模湾南部)。由于环境参数存在自相关,因此使用带有普赖斯-温斯坦估计器的广义最小二乘法(GLS)模型进行时间序列和相关分析。

结果

在所有地区,东京湾的透明度最浅,其次是浦贺水道、相模湾和相模滩,冬季(12 月和 1 月)较深,夏季(7 月)较浅。使用 GLS 模型的相关分析表明,透明度的变浅与温度、盐度和磷酸盐浓度的降低显著相关。然而,使用 GLS 模型的时间序列分析表明,除了东京湾外,其他地方的表层温度明显升高,表层磷酸盐和亚硝酸盐浓度普遍下降,除了东京湾外,透明度都明显变浅。在光限制季节(1 月至 3 月),Secchi 深度的明显变浅趋势大多观察到。

讨论

相关分析表明水平平流输送的重要性,特别是来自富营养化且水温较低、盐度较低的东京湾。然而,长期的 Secchi 深度变浅与变暖有关,在 Secchi 深度趋势显著的大多数月份,盐度变化并不显著。因此,水平平流不是长期富营养化的主要原因。由于富营养化趋势主要发生在冬季,此时光是初级生产力的主要限制因素,我们得出结论,变暖为浮游植物生长提供了更好的光照环境,导致富营养化。由于在调查区域报告了 20 世纪 90 年代后人为营养物输入的减少,长期富营养化趋势很可能是由于全球变暖所致,这是人类活动造成的另一个令人担忧的影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0f61/10389074/c0ba2c484f94/peerj-11-15764-g001.jpg

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