WEBVTT FILE 1 00:00:00.030 --> 00:00:08.309 um hi everyone my name is Wen-Ying Wu and I'm the PhD student and UT Austin I'm 2 00:00:08.309 --> 00:00:13.380 working on you geological sciences but today we are going I'm going to tell you 3 00:00:13.380 --> 00:00:17.640 a new project that we are working with a mechanical engineering group in our 4 00:00:17.640 --> 00:00:24.480 school, so we are trying to put the flaw prediction into a hurricane 5 00:00:24.480 --> 00:00:29.550 receipt and healthcare infrastructure modeling basically is about how to 6 00:00:29.550 --> 00:00:33.660 optimize the resources for hospital evacuation 7 00:00:33.660 --> 00:00:39.620 doing those flood events so here you can see the NASA satellite image that is 8 00:00:39.620 --> 00:00:46.320 a MODIS image and you can see the the hurricane Harvey and how dramatic it is 9 00:00:46.320 --> 00:00:49.380 in the Texas Gulf region 10 00:00:51.500 --> 00:00:55.980 so I'm giving you an overview of the Harvey event so 11 00:00:55.980 --> 00:01:02.699 Harvey is a hurricane and 2017 August and it's bring tremendous on renzo and 12 00:01:02.700 --> 00:01:06.600 the Texas Gulf Coast on region 13 00:01:09.800 --> 00:01:14.960 and eight minutes length for around August 26 and 14 00:01:14.960 --> 00:01:20.670 the east part in the north part after Harvey brings a lot of rainfall in to 15 00:01:20.670 --> 00:01:26.310 Texas Gulf region so actually it and this caused many hospital and a nursing 16 00:01:26.310 --> 00:01:29.570 home had to evacuate 17 00:01:36.200 --> 00:01:45.100 and unfortunately Harvey kills a hundred and six lives during several days 18 00:01:53.380 --> 00:01:57.939 yeah so you might be thinking about there are so many hospital over Texas 19 00:01:57.939 --> 00:02:02.560 and so many nursing home and we have very limited amount of the ambulance and 20 00:02:02.560 --> 00:02:07.930 the buses so how to optimize all the resources to get the ambulance moving 21 00:02:07.930 --> 00:02:14.680 around the Texas Gulf region and have the limited resources optimize and save the 22 00:02:14.680 --> 00:02:23.709 life and I would like to say this framework is have the global impact 23 00:02:23.709 --> 00:02:29.680 because globally water cycle is moving every, every day every time everywhere 24 00:02:29.680 --> 00:02:37.480 and here is my visualization of the how the river moving over there event, so in 25 00:02:37.480 --> 00:02:45.340 a water year you can see there is a big seasonality of river stream flow because 26 00:02:45.340 --> 00:02:50.709 of like snow melting or the rain flow or the free throw process over the arctic 27 00:02:50.709 --> 00:02:57.489 regions so about 35% of the precipitation will go into the runoff 28 00:02:57.489 --> 00:03:06.370 and that accounts for 40 cubic 40,000 cubic kilometres amount of water running 29 00:03:06.370 --> 00:03:09.400 to the ocean every year 30 00:03:10.920 --> 00:03:16.260 so here's a year water cycle of the streamflow animation 31 00:03:16.269 --> 00:03:23.049 so I run the river multi model with using the Geo DIS is a NASA learning 32 00:03:23.049 --> 00:03:30.670 surface data assimilation product and to simulate it how the water transfer from 33 00:03:30.670 --> 00:03:32.880 the upstream to the downstream 34 00:03:35.200 --> 00:03:39.640 so let's move back to the Texas Gulf region so 35 00:03:39.640 --> 00:03:45.970 this is the time Frame of where and when Harvey happens later on you will 36 00:03:45.970 --> 00:03:52.209 see a dramatic amount of the water that is because of the way.. on the rain fall 37 00:03:52.209 --> 00:03:57.700 bring from Harvey quit was appear in that region and would take all the 38 00:03:57.700 --> 00:04:03.220 plains around and those thought actually is the location of the hospital 39 00:04:03.220 --> 00:04:07.090 in a nursing home, so it's the really question that's all 40 00:04:07.090 --> 00:04:12.870 for this amount of the water moving over the land, how do we optimize the 41 00:04:12.870 --> 00:04:16.180 resources to save the life 42 00:04:19.180 --> 00:04:22.520 so the Harvey when it made its first land fall 43 00:04:22.520 --> 00:04:24.780 August 26 but the 44 00:04:24.790 --> 00:04:29.980 flooding last for several days because Harvey's surrounding around in these 45 00:04:29.980 --> 00:04:39.400 regions for a long time that's beyond our expectation so that its first test 46 00:04:39.400 --> 00:04:47.020 test case um of the project I'm doing this semester to see how we can evacuate 47 00:04:47.020 --> 00:04:53.910 the hospital resources um in this story 48 00:04:55.320 --> 00:05:04.030 so that is our framework, um, I'm working on the Geo science team which is about this 49 00:05:04.030 --> 00:05:12.240 part so we used national water model which is a continental scale flood 50 00:05:12.240 --> 00:05:18.520 forecast model and we use the streamflow and then we use a method to simulate the 51 00:05:18.520 --> 00:05:23.800 flood heads and that is for the river flooding from them I mean the the fresh 52 00:05:23.800 --> 00:05:29.470 water flooding from the stream flow but also we use the / model to simulate 53 00:05:29.470 --> 00:05:36.100 in the storm surge which is salient water that will also cause flooding especially 54 00:05:36.100 --> 00:05:43.380 in the coastal region like this and that is from the front end to the break 55 00:05:43.380 --> 00:05:49.920 backend the engineering team they would use the stochastic optimization model so 56 00:05:49.930 --> 00:05:59.120 basically is optimization so it was minimize the resources between the 57 00:05:59.139 --> 00:06:05.620 hospital and see how many so the final result of that is so we was simulated 58 00:06:05.620 --> 00:06:12.700 that how the brute Map going to be like to try to optimize this resources 59 00:06:12.700 --> 00:06:18.789 around different hospital so later on I'm going to show you the result of two 60 00:06:18.789 --> 00:06:22.729 simulations one with using the national water model 61 00:06:22.729 --> 00:06:32.090 only to, to account for the flooding from the river and the other ones use 62 00:06:32.090 --> 00:06:38.120 both national water model and the slash model to account for the flash 63 00:06:38.120 --> 00:06:43.080 freshwater flooding but also the storm surge together 64 00:06:44.980 --> 00:06:47.180 so here's the result of 65 00:06:47.180 --> 00:06:57.530 the Ruth meds for account for the natural water model only for the red 66 00:06:57.530 --> 00:07:03.680 dots mean the hospital that's going to receive the patient that is come from 67 00:07:03.680 --> 00:07:08.810 the sender so the the greens out mean that's the hospital that is really in the 68 00:07:08.810 --> 00:07:12.900 dangerous because of the flooding they they have to send a patient to somewhere 69 00:07:12.920 --> 00:07:18.349 else and the staging area means that the the location of the ambulance or 70 00:07:18.349 --> 00:07:27.440 original is so here we are those centers is pick up because of those regions are 71 00:07:27.440 --> 00:07:32.570 going to be flooded based on the weather forecast and then to the hydrological 72 00:07:32.570 --> 00:07:39.320 forecast and to the optimization model and later I'm going to show you the 73 00:07:39.320 --> 00:07:44.720 results with another model together so you might expect this for those coastal 74 00:07:44.720 --> 00:07:53.240 regions those hospitals though are going to pick out because of the storm surge so 75 00:07:53.240 --> 00:08:01.460 now you can see that those hospitals in those coastal regions are really I need 76 00:08:01.460 --> 00:08:07.040 to evacuate the patient because of the storm surge so in this project we 77 00:08:07.040 --> 00:08:14.990 account for the fresh water but also the storm surge together and we start to do 78 00:08:14.990 --> 00:08:18.740 this project at the beginning of September so we have very limited 79 00:08:18.740 --> 00:08:26.960 primary results but I'm happy to make the science from useful to usable to 80 00:08:26.960 --> 00:08:30.770 make our science have the social impact and try to save some lives 81 00:08:30.770 --> 00:08:38.510 yeah and for this project and like to thank for our engineering team and also 82 00:08:38.510 --> 00:08:46.149 AGU and NASA to support this conference yeah thank you