Impact of Climate Extremes on Suitability Dynamics for Japanese Scallop Aquaculture in Shandong, China and Funka Bay, Japan

: The assessment of extreme weather events on suitable sites for aquaculture could help in establishing sustainable coastal environmental resource management. Japanese scallop culture is an economically important marine farming activity in the coastal communities of Shandong, China and Funka Bay, Japan. In this study, we improved the suitable aquaculture site-selection model (SASSM) by using Geostationary Ocean Color Imager (GOCI) data instead of Moderate Resolution Imaging Spectroradiometer (MODIS) data, as a complementary source for higher temporal and spatial resolution data that are useful for monitoring ﬁne-scale coastal and oceanic processes. We also applied the newly developed SASSM to the Japanese scallop production site along the Shandong coast. Finally, we analyzed the correlations between environmental factors (chlorophyll a concentration, sea surface temperature (SST), and total suspended sediment), meteorological factors (precipitation, temperature, and wind), and climatic events (winter East Asian monsoon (EAM) and El Niño / La Niña Southern Oscillation), and the impacts of climate events on suitable zones for scallop aquaculture. The new SASSM maps show that GOCI products have the potential for oceanographic investigations in Shandong, China and Funka Bay, Japan. Our results highlighted higher aquaculture site suitability for scallop in Funka Bay than in Shandong coast. During the winter with a strong EAM (2011), the suitable area for Japanese scallop aquaculture increased. Conversely, in the winter during a strong El Niño (2016), we found fewer areas that were highly suitable for scallop aquaculture in Funka Bay. SST was extremely low in Funka Bay during spring and summer 2017, which caused fewer highly suitable areas (scores of 7 and 8) for scallop aquaculture relative to other years. These ﬁndings suggest that extreme climatic events signiﬁcantly impact the availability of suitable sites for marine farming and thus, should be considered in the development and design of coastal aquaculture sites.


Introduction
In recent years, an increase in the intensity and frequency of extreme weather events has been reported [1]. For example, in the winter of 2010, East Asia, Europe, and North America suffered from extremely cold weather [2]. According to monitoring reports by NOAA (National Oceanic and Atmospheric Administration) Climate prediction center, the 2015/2016 El Niño was one of the strongest El Niño events in the past twenty years [3]. The sea surface temperature in the Yakumo coastal region, Hokkaido was reported to be extremely cold in 2017 summer. These extreme events are rare, although they may become more common in the future, as a result of climate variability [4]. Climate extremes Funka Bay is located in the coastal waters of southern Hokkaido in northern Japan, a region affected by the inflow of warm Tsugaru water from autumn to winter and cold Oyashio water from spring to summer [18]. Scallop aquaculture industry can be found all along the coast of Funka Bay. The annual production of cultured Japanese scallops in Funka Bay was approximately 123,954 tonnes in 2015 and the value of Japanese scallops in Funka Bay was 2929 million JPY in 2015 [19]. Annual scallop production data per region ( Figure 2) are published by the Fisheries Department of the Hokkaido government and are available at the Marinenet Hokkaido website [19]. The annual scallop production of Yakumo accounts for about 30% of total Funka bay region. Scallop aquaculture uses suspension culture in both Shandong and Funka Bay region.

MODIS and GOCI Data
The marine environmental factors examined include SST, chlorophyll a (Chl-a) concentration, and total suspended sediment (TSS) concentration, which were derived from MODIS (Moderate Resolution Imaging Spectroradiometer)-Aqua (a spacecraft launched on May 4, 2002 by NASA, Washington, DC). reprocessing R2018.0 (2014.0 for SST) (provided by NOAA, Washington, DC, USA) as Level 2 data with 1-km resolution. All daily Level 2 Ocean Color (OC) and SST (11 um) data from 1 April 2011 to 30 July 2018 were downloaded from the Ocean Color website and processed using SeaDAS v7.5 (NOAA, Washington, DC, USA) [20]. Level 2 to Level 3 processing entails mapping data from the raw satellite perspective to cylindrical coordinates. The first step is to spatially bin the file (l2 bin "binary"), and then creating temporal average for monthly observation (l3 bin), and finally create a mapped l3 bin data (l3 mapgen "map generation") and write it as a 2D floating point array of the geophysical data with 1 km spatial resolution. Monthly-average n L w (555) images were used to calculate TSS concentration images (g m -3 ) based on Ahn's algorithm [21], where n L w (555) is normalized water leaving radiance at 555 nm, serving as an indicator of water column turbidity.
We acquired all daily GOCI (Geostationary Ocean Color Imager) L1B data from 1 April 2011 to 30 July 2018 from the Korea Ocean Satellite Center (KOSC) website [22]. GOCI L1B data were processed through the standard GOCI Data Processing System software (GDPS v2.0) (Korea Institute of Ocean Science and Technology (KIOST), Busan, Korea) to produce Level 2 products using default atmospheric correction [16] for Chl-a and TSS data. Shandong coastal water is more turbid than Funka Bay, therefore the Yoc [23] and OC2 [24] algorithms were used for Chl-a concentration and TSS processing, respectively. After taking the composite all cloud free daily data into monthly period, GDPS could convert the file to raster format which could only be opened by ENVI (The Environment for Visualizing Images) software (Exelis Visual Information Solutions, Berkshire, UK) directly. Because of the difference of atmospheric correction algorithm and cloud detection between MODIS and GOCI [25], the GOCI image shows poor performance in nearshore areas along the coastline and has noisier observations than MODIS data. Therefore, we applied a low pass 3-by-3 filter over the raster in the filter operation of ArcGIS (Arc Geographic Information System, Environmental Systems Research Institute, Redlands, CA, USA) to smooth the entire input raster and reduce the influence of anomalous cells. Finally, all GOCI data were resampled to the same 1 km resolution grid as the MODIS data.

Land and Bathymetry Images
Advanced Land Observing Satellite (ALOS) Advanced Visible and Near-Infrared Radiometer type-2 (AVNIR-2) images acquired on 9 November 2010 and 14 February 2011 for Funka Bay with 10-m resolution were downloaded from the ALOS User Interface Gateway (AUIG) website [26], as level-1B2G geo-coded data. Landsat-8 Operational Land Imager (OLI) data collected on 27 September for Shandong were downloaded from the United States Geological Survey Earth Resources Observation Satellites (USGS EROS) website [27]. These data were used for extracting social infrastructure and constraint data, such as harbors, town/industrial areas, and river mouths.
Bathymetry data for Funka Bay were obtained from the Japan Oceanographic Data Centre (JODC) and were integrated and gridded at 150-m intervals. Bathymetric data for the Shandong coastal area were derived from ETOPO1 (developed by National Geophysical Data Center, Boulder, CA, USA), which is a 1-arcminute global relief model of the Earth's surface that integrates land topography and ocean bathymetry. All bathymetry data were resampled to 1 km resolution same with MODIS and converted to raster format using ArcGIS v10.2 (Environmental Systems Research Institute, Redlands, CA, USA).

In-Situ and Shipboard Data
We used in situ monitoring data collected at the Hokkaido Hakodate Fisheries Experimental Station at Yakumo (42 • 16.60 N, 140 • 20.09 E) from 2011 to 2013 ( Figure 1). The observation period began in July and ended in June of the following year, and measurements of scallop adductor muscle weight (AMW) as growth indicator once a month. There is one hanging rope with the upper (5 m), middle (10 m), and lower (15 m) layers for experiment. Each layer has 10 individual scallops. Monthly mean AMW values of all scallops in upper layer were used as verification data for newly developed SASSM model. Shipboard data were obtained during five cruises on RV Ushio-Maru (Hokkaido University) between May 2011 and January 2012 ( Table 1). Conductivity-temperature-depth (CTD) sensor deployment including temperature and chlorophyll modules were conducted at 33 stations in Funka Bay ( Figure 1). Shipboard data were used as verification of satellite data and model adjustment. Meteorological data corresponding to the satellite data coverage period (2011-2018) including monthly mean air temperature, precipitation, and wind speed were used in this study. The meteorological data at Rongcheng station were acquired from the Climatic Data Center, National Meteorological Information Center, China Meteorological Administration [28]. The meteorological data for Yakumo were published by the Japan Meteorological Agency (JMA) [29]. The intensity of the winter monsoon is well represented by the monsoon index (MOI), which is defined as the difference in sea-level pressure (SLP) between Nemuro, Japan and Irkutsk, Russia [30]. Monthly SLP datasets at 2.5 • resolution were acquired from the NCEP Reanalysis database (NOAA/OAR/ESRL PSD [31]. Oceanic Niño index (ONI) values, defined as SST anomalies in the Niño 3.4 region (located at 5 • N-5 • S and 120 • -170 • W) of the eastern and central equatorial Pacific Ocean, were based on the 1971-2000 base period. ONI data are published by the NOAA National Weather Service, Center for Climate Prediction [32]. We sorted El Niño and La Niña episodes into three categories: strong, moderate, and weak, based on their ONI values, using threshold values obtained from Stachelski and Czyzyk [33].

Suitable Aquaculture Site Selection Model (SASSM) Improvement
We built a combined monitoring system using sea-, land-, and space-based measurements for Japanese scallop aquaculture sites ( Figure 3). For space-based monitoring, we used various satellite data to detect environmental changes. For sea-based monitoring, shipboard data was used to elucidate changes in the marine environment. Lastly, ground-based observation data were used to identify meteorological changes. Combined with climate event data and SASSM, we were able to comprehensively evaluate scallop aquaculture sites and monitor the associated impact of climate variability. The core of this system is the SASSM, which is made up of three sub-models, including an environmental model (Chl-a, SST, TSS, and bathymetry), a social infrastructure model (distances to towns, piers, and land-based facilities), and a constraints model (harbors, area of nearby towns, and river mouths) [34]. All parameter values were reclassified using a standard scoring method based on the requirement of scallop culture system [14]. Parameter weights were determined by pairwise comparison according to the analytical hierarchy process for decision-making [35]. Each model was implemented using Model Builder in ArcGIS and constructed using the weighted linear combination (WLC) method of multi-criteria evaluation (MCE) [36]. The final suitability map was created by combining results from the three sub-models. Suitability scores were ranked on a scale from 1 (least suitable) to 8 (most suitable). Using MODIS data, the developed SASSM was well applied in Funka Bay, Japan, however, as there were differences in the performance of GOCI and MODIS, the scoring system should be adjusted for new SASSM. Threshold value of each suitability scores for replaced parameters (Chl-a and TSS) could be converted by using relevance analysis method between GOCI and MODIS products. The improved SASSM optimized for GOCI data was developed based on previous SASSM [12][13][14]. We develop the new models using three steps. The first step is using the new GOCI Chl-a parameter instead of MODIS Chl-a with the previous scoring system. For the second step, we developed an SASSM using GOCI Chl-a data with a new scoring system. In the third step, we developed an SASSM using GOCI Chl-a data and GOCI TSS data instead of MODIS TSS data with the new scoring system. We compared the previous and the newly-developed models by calculating percentage of total aquaculture area in each suitable level and verified the predictive performance of each model by using the existing information on aquaculture area, in-situ measurements of scallop AMW and production data.

Correlation Analysis
Pearson's correlation coefficients (r) were used to examine the relationships among changes in climate events (MOI and ONI), environmental factors (Chl-a concentration, SST, and TSS), and meteorological factors (precipitation, temperature, and wind). Statistical significance was determined based on t-tests at a significance level of 0.05. Correlation matrices were generated using the pairs function in R (v3.5.2 software) (a free software from R Foundation, R Core Team, Vienna, Austria).

Verification of GOCI and MODIS Data by In-Situ Data
Chl-a is one of the most important environmental factors for model construction. Here, as both GOCI and MODIS generate Chl-a concentration products, we used the shipboard observations to evaluate the sensor-specific accuracy of satellite-derived Chl-a measurements. GOCI and MODIS are both highly affected by cloud cover. Thus, we used Chl-a concentration data from the nearest available time to match the shipboard observations date ( Table 1). The relationship between GOCI and in-situ Chl-a in Funka Bay (Figure 4a) had a coefficient of determination (R 2 ) of 0.63, which is less than the value obtained between MODIS and in-situ Chl-a (R 2 = 0.80; Figure 4b). The relationship between GOCI and MODIS had an R 2 value of 0.39 (Figure 4c).

Comparison of GOCI, GOCI Filtered, and MODIS Monthly Composite Data
All cloud free environmental factors (Chl-a, and TSS) were composited monthly to construct the SASSM for Japanese scallop aquaculture. The Chl-a spring bloom usually occurred during March to May in Funka Bay, Japan, therefore, we use May 2011 as an example. Running a band pass filter on the raw GOCI images (Figure 5a

Development of a New Scoring System for GOCI Data in SASSMs
Since the previous model was based on MODIS data, we made minor adjustments to the scoring system (Table 2) to accommodate the inclusion of GOCI data. The Chl-a and TSS thresholds in the scoring system were adjusted according to the relationship between monthly composite data from GOCI and MODIS (Figure 6c,f). The other parameters (bathymetry and SST) were similar to the earlier model as SST measurements were not available from GOCI.

Improvement of SASSMs with GOCI
The SASSM optimized for GOCI data was using May 2011-April 2012 annual mean data as an example. The first model using the new GOCI Chl-a parameter instead of MODIS Chl-a with the previous scoring system showed that switching over to GOCI Chl-a data increased the area of suitable regions in Funka Bay (Figure 7b). The percentage of area falling into the most suitable category (score 8) increased significantly from 17.5% to 60.7% (Table 3). The second model (Figure 7b) developed using GOCI Chl-a data with a new scoring system, showed similar distribution of suitable area with the previous model (Figure 7a). This was likely due to scoring adjustment made, based on correlation between GOCI and MODIS Level 2 Chl-a data. Also, the percentage of most-suitable area (score 8) fell to 14.3% (Table 3), which is consistent with previous studies [5]. The third model developed using GOCI-derived Chl-a and TSS (in place of MODIS data) with adjusted scores (Figure 7d), showed slight differences relative to the earlier models (Figure 7a,c). The percentage of highly suitable areas with scores of 6, 7, or 8 was also comparable to the previous model (Table 3). These results indicate that GOCI data can be used instead of MODIS data for model development. From the comparison of the newly developed SASSM using GOCI data and the previous SASSM using MODIS data, the results showed that the percentage and distribution of suitable areas in the new model and previous model were similar (Figure 7a,d). We also compared our results with actual Japanese scallop culture zones and could see that the most suitable areas (score 8) were consistent with the existing aquaculture areas (Figure 7). From production of Japanese scallops in Funka Bay (Figure 2), we know that Yakumo had the highest production, consistent with the results of the new SASSM. For validation, the monthly AMW of scallop from in-situ monitoring station was tested against the suitable scores from the newly developed SASSM using GOCI data and the previous SASSM using MODIS data (Figure 8). The score-based correlation between the new developed and previous SASSMs was high (Figure 8a), however, the correlations between the monthly AMW with new and previous SASSMs' scores were low (Figure 8b,c). Although the relationships between scallop AMW with new and previous SASSM scores were weak, most AMW data were distributed on scores 6 and 7 (suitable area) in both models.

Spatial Variations in Suitable Areas Between Funka Bay and Shandong Coast
Using the newly developed SASSM, we generated 85 monthly suitable site maps for each site of Japanese scallop aquaculture for the Shandong coastal area and Funka Bay (May 2011-June 2018). To examine the spatial distributions of the suitable sites between these regions, growing season (May) maps from 2011 to 2018 were used as an example. Based on the predicted suitable areas for Japanese scallop aquaculture in Shandong (Figure 9), the regions in the northern and eastern portions of the Shandong coast were more suitable than the southern portion. This pattern is primarily due to the north to south increase in water temperature, thus, posing thermal constraint on cold-adapted scallop species [37]. According to the administrative region of Shandong, the northern part of Rongcheng is more suitable than other regions that show a larger blue area in the final SASSM maps. This result is consistent with the actual Japanese scallop aquaculture sites in Shandong. From the final growing season suitable site maps in Funka Bay (Figure 10), it was apparent that most of the region along Funka Bay was suitable for Japanese scallop aquaculture. Among the zones, the Yakumo region was the most suitable. The comparison of the final suitable site maps between Shandong and Funka Bay revealed that the latter is better suited for Japanese scallop aquaculture than the former.

Seasonal Variability in Suitability Scores and Environmental, Meteorological, and Climate Factors
Using the newly developed SASSM, we generated the mean values of monthly suitability scores, environmental factors (Chl-a, TSS, and SST) and meteorological factors (temperature, precipitation, and wind) for each zone in Shandong and Funka Bay between 2011 and 2018. Among all zones, we the sites with the highest suitability were selected to represent each region (Yakumo for Funka Bay and Rongcheng for Shandong coasts, Figure 11). The peak of Chl-a concentration during spring (April-June) in Rongcheng was higher than those in Yakumo, however, in Yakumo region, the Chl-a bloom in autumn (October-November) was significantly higher than that in Rongcheng (Figure 11a). The seasonal variability of TSS in Rongcheng was highest in winter (December-March) and lowest in summer (July-September). However, the TSS concentration in Yakumo showed minimal fluctuations (Figure 11b). It is apparent that Rongcheng coastal waters are Case 2 waters, in which TSS may reach 35 g m −3 . However, the Yakumo region is clearly Case 1 water, with maximum TSS below 3 g m −3 . The average values of SST (Figure 11c) and air temperature (Figure 11d) were very similar in the two locations, which exhibited a minimum in January and a maximum in August. The SST and air temperature in Rongcheng were higher than those in Yakumo. The highest average values of precipitation in Rongcheng and Yakumo were in August and July, respectively (Figure 11e). The average wind speed in Rongcheng was obviously stronger than that in Yakumo, and was highest from winter to spring (December-April) and lowest in summer (August-September) (Figure 11f). The average suitability scores in Yakumo were higher than that in Rongcheng, and both locations had two peaks, one in spring (April-June) and one in autumn (October-November) (Figure 11g).
In order to highlight the impacts of climate variability in these two regions, monthly anomalies of environmental (Chl-a, TSS and SST) and meteorological factors (temperature, precipitation and wind) in both regions were examined for the period 2011-2018 ( Figure 12). Winter East Asian monsoon (EAM) and ENSO (El Niño-Southern Oscillation) events have been identified as major drivers controlling winter climate over the North Pacific [38]. The monthly time series of the MOI anomaly and ONI indices during 2011-2018 (Figure 12h) showed that in the winter of 2011, the MOI was positive, which means that strong northerly winds prevailed over Northeast Asia from December to February [39].  (Figure 12f), however, showed a decreasing trend from 2011 to 2018. The air temperature anomaly in January 2011 at Rongcheng was also at its lowest (Figure 12d). It appears that the anomalies in monthly suitable score were strongly influenced by SST and air temperature (Figure 12g), as oceanic variability and atmospheric circulation are tightly coupled [40].

Correlations Among Climate Events, Environmental Factors, and Meteorological Factors
Variations in the climate and oceanic environment during winter (December-February) strongly influence scallop aquaculture in the spring. Figure 13 illustrates the relationships among these factors in Shandong during the winter season. Several significant correlations emerged from this analysis. MOI was strongly correlated with Chl-a, TSS and temperature. The ONI also showed strong negative correlation with wind (r= −0.69). Stronger winds may accelerate convective and eddy mixing [41,42], which in turn, could enhance TSS concentration as observed in satellite data. SST exhibited strong correlations with Chl-a (r = 0.63) and air temperature (r = 0.65). Significant correlations among these factors in Funka Bay were also observed in winter between 2011 and 2018 ( Figure 14). SST coupled with air temperature was strongly correlated with TSS and Chl-a, with precipitation strongly correlated with wind, Chl-a, TSS and SST. ONI was also correlated with temperature.

Discussion
The study identified assimilation of satellite data into GIS could provide useful information to identify spatial levels of suitability for scallop aquaculture. These technologies paid attention by much researchers to be used in planning and decision-making aquaculture activities [9][10][11][12][13][14]. SST, Chl-a and TSS could be extracted from ocean color satellite are often used as typical indicator for aquaculture research [4][5][6]. However, various type of satellite data limited not only on spatial and temporal resolutions, but also sources of accuracy. This study compared shipboard data with GOCI and MODIS illustrates that the latter had better Chl-a concentration accuracy than the former. From the comparisons between GOCI, GOCI filtered and MODIS monthly composites in existing aquaculture sites, correlations of Chl-a and TSS from GOCI and MODIS were relatively weak even after applying the filter operation. This may be due to the differences in algorithms used for calculating the science products [43]. In addition, there are sensor-specific differences. For one, MODIS is a polar-orbiting satellite sensor that collects data at about 1-km resolution once per day, whereas GOCI is a geostationary sensor that provides images every hour from 00:00 GMT to 07:00 GMT with 500-m resolution [16]. The high frequency of GOCI observations coupled with future improvement on the algorithms could possible prove hourly information for monitoring biological and physical processes in the northeast Asian coastal regions.
Through examining the correlations among climate events index, and environmental and climatic factors, we detected differences between Shandong coastal and Funka Bay. Our results indicate that MOI, ONI, wind, and SST play important roles in regulating the winter climate and marine environment in Shandong coastal region. Shandong peninsula not only affected by monsoon-influenced humid continental climate, but also oceanographically climate variations. The winter East Asia Monsoon driving strong northerly winds at the surface and along the China coasts, and shelf shallow-sea convective mixing and eddy mixing, which provide sufficient water exchange to supply nutrients for scallops [41][42][43][44]. SST in the northwestern Pacific shown high frequency variations associated with ENSO events [40]. in addition, strong wind could destroy the aquaculture facilities in the sea surface. Therefore, developing an integrated coastal aquaculture information system using satellite, buoy and numerical modeling data can be useful to monitor realistic wind and SST variations in Shandong coastal waters, which could provide early warning information for scallop aquaculture management. Previous studies have similarly reported significant correlations among ONI, Chl-a concentration, temperature and precipitation in Funka Bay [6]. Many studies have examined the influence of ENSO on temperature in East Asia [45,46] and highlighted the impact of heavy precipitation on salinity and phytoplankton dynamics in coastal regions [47]. Therefore, monitoring precipitation and temperature also important in Funka Bay.
During the past 8 years (2011-2018), we observed two extreme climate events, a strong positive MOI in winter 2011 and a strong El Niño event in 2015-2016. The Shandong Peninsula and Funka Bay are located in Northeast Asia, which is greatly impacted by EAM in winter. In addition, the dominant climate variability in the western North Pacific are high-frequency variations associated with ENSO events [37]. Comparison of climate indices (ENSO and MOI) and suitable areas in Weihai and Funka Bay across different years (2011-2016) during the growing season (May) highlighted differences. From these results, it is evident that the most suitable areas (scores 7 and 8) accounted for 15-20% of the Weihai coastal region (Table 4), and majority of the region was evaluated as medium suitability areas (scores 4, 5, and 6) for Japanese scallop aquaculture. This pattern is also apparent from the final SASSM maps for Shandong ( Figure 9). Looking at the changes over time, the largest areas with score 7 (59.6%) in 2016 had likewise the highest total production, corresponded to a period with positive MOI and strong El Niño. Correlation analyses for environmental, meteorological factors and climate events confirmed that strong positive MOI and wind regulated the ocean and climate patterns in the Shandong coastal aquaculture region.
Using similar analysis for Funka Bay, most regions were found highly suitable for the Japanese scallop aquaculture, with scores of 6, 7, and 8 accounting for more than 95% of the total area every year ( Table 5). The smallest suitable areas with scores of 7 (38.4%) and 8 (0.1%) were observed in 2017, when anomalously low SSTs in spring and summer were also observed. The SASSM maps ( Figure 10) also reflected these patterns of decline in most suitable areas during this period, which could likely be a response to the lag in the climate impact of the strong El Niño event in 2016. The changes of most suitable areas were also evident from the lowest total production reported in 2017.On the other hand, highest spatial extent of most suitable areas (scores 8, 29.2%) was observed in 2012, corresponding to an anomalously high Chl-a concentration. Correlation analyses of environmental factors, meteorological factors, and climate events in Funka Bay further highlight the importance of ONI and SST on Japanese scallop aquaculture. Comparison of the annual production of Japanese scallops between Shandong and Funka Bay presents difficulty in determining the relative quality of the two aquaculture areas. The spatial extents of both areas are different and scallop production is also influenced by factors such as the size of labor force, aquaculture management strategies, and the length of time in which aquaculture activities are in operation (three years in Funka Bay and one year in Shandong). However, in both regions, we have shown that climate events significantly affected the extent of suitable areas for Japanese scallop aquaculture, consistent with the results of the previous studies [4,5,9]. This work provides further support to the importance of environmental and climate monitoring towards sustainable aquaculture production and management in northeastern China and southern Hokkaido, Japan.

Conclusions
This study explored the feasibility of GOCI Chl-a and TSS data as complementary source for improving SASSM for the Japanese scallop aquaculture between two coastal regions (Shandong and Funka Bay). Our results suggested that GOCI products could prove useful for SASSM analyses and monitoring of coastal environment in high spatial and temporal resolution, with future improvement on the current algorithms used for deriving the ocean color products (Chl-a and TSS). The SASSM could also be improved by incorporating in situ and long term scallop growth observations to fit and verify the models. Our analyses revealed the impacts of climate variability to the availability of suitable sites in the two regions. In northeastern China, winter EAM was shown to affect the environment and climate dynamics in coastal aquaculture sites. Positive winter EAM, defined by low temperature and strong wind, is associated with Chl-a concentration enhancement in spring that could boost the scallop growth in Shandong coasts. In Funka Bay, ENSO events were also influential in regulating marine environmental dynamics., where El Niño events associated with precipitation, SST and Chl-a could significantly affect the availability of suitable areas. Undoubtedly, climatic events exert significant impacts on the extent of suitable areas for Japanese scallops across these regions and thus, climate dynamics should be considered in the management of coastal scallop aquaculture.