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Sunday, November 24, 2024

An introduction to climate forecasting with deep studying


With all that is occurring on this planet as of late, is it frivolous to speak about climate prediction? Requested within the twenty first
century, that is certain to be a rhetorical query. Within the Thirties, when German poet Bertolt Brecht wrote the well-known strains:

Was sind das für Zeiten, wo
Ein Gespräch über Bäume quick ein Verbrechen ist
Weil es ein Schweigen über so viele Untaten einschließt!

(“What sort of instances are these, the place a dialog about bushes is sort of against the law, for it means silence about so many
atrocities!”),

he couldn’t have anticipated the responses he would get within the second half of that century, with bushes symbolizing, in addition to
actually falling sufferer to, environmental air pollution and local weather change.

Immediately, no prolonged justification is required as to why prediction of atmospheric states is significant: Because of world warming,
frequency and depth of extreme climate circumstances – droughts, wildfires, hurricanes, heatwaves – have risen and can
proceed to rise. And whereas correct forecasts don’t change these occasions per se, they represent important data in
mitigating their penalties. This goes for atmospheric forecasts on all scales: from so-called “nowcasting” (working on a
vary of about six hours), over medium-range (three to 5 days) and sub-seasonal (weekly/month-to-month), to local weather forecasts
(involved with years and many years). Medium-range forecasts particularly are extraordinarily essential in acute catastrophe prevention.

This submit will present how deep studying (DL) strategies can be utilized to generate atmospheric forecasts, utilizing a newly revealed
benchmark dataset(Rasp et al. 2020). Future posts might refine the mannequin used right here
and/or focus on the position of DL (“AI”) in mitigating local weather change – and its implications – extra globally.

That stated, let’s put the present endeavor in context. In a method, we’ve got right here the standard dejà vu of utilizing DL as a
black-box-like, magic instrument on a activity the place human information was required. In fact, this characterization is
overly dichotomizing; many selections are made in creating DL fashions, and efficiency is essentially constrained by out there
algorithms – which can, or might not, match the area to be modeled to a ample diploma.

Should you’ve began studying about picture recognition reasonably not too long ago, you might nicely have been utilizing DL strategies from the outset,
and never have heard a lot concerning the wealthy set of characteristic engineering strategies developed in pre-DL picture recognition. Within the
context of atmospheric prediction, then, let’s start by asking: How on this planet did they try this earlier than?

Numerical climate prediction in a nutshell

It’s not like machine studying and/or statistics usually are not already utilized in numerical climate prediction – quite the opposite. For
instance, each mannequin has to begin from someplace; however uncooked observations usually are not suited to direct use as preliminary circumstances.
As a substitute, they should be assimilated to the four-dimensional grid over which mannequin computations are carried out. On the
different finish, specifically, mannequin output, statistical post-processing is used to refine the predictions. And really importantly, ensemble
forecasts are employed to find out uncertainty.

That stated, the mannequin core, the half that extrapolates into the long run atmospheric circumstances noticed at the moment, is predicated on a
set of differential equations, the so-called primitive equations,
which can be as a result of conservation legal guidelines of momentum,
power, and
mass. These differential equations can’t be solved analytically;
reasonably, they should be solved numerically, and that on a grid of decision as excessive as attainable. In that gentle, even deep
studying might seem as simply “reasonably resource-intensive” (dependent, although, on the mannequin in query). So how, then,
might a DL method look?

Deep studying fashions for climate prediction

Accompanying the benchmark dataset they created, Rasp et al.(Rasp et al. 2020) present a set of notebooks, together with one
demonstrating using a easy convolutional neural community to foretell two of the out there atmospheric variables, 500hPa
geopotential
and 850hPa temperature. Right here 850hPa temperature is the (spatially various) temperature at a repair atmospheric
top of 850hPa (~ 1.5 kms) ; 500hPa geopotential is proportional to the (once more, spatially various) altitude
related to the stress degree in query (500hPa).

For this activity, two-dimensional convnets, as normally employed in picture processing, are a pure match: Picture width and top
map to longitude and latitude of the spatial grid, respectively; goal variables seem as channels. On this structure,
the time collection character of the info is actually misplaced: Each pattern stands alone, with out dependency on both previous or
current. On this respect, in addition to given its dimension and ease, the convnet offered under is simply a toy mannequin, meant to
introduce the method in addition to the applying total. It might additionally function a deep studying baseline, together with two
different sorts of baseline generally utilized in numerical climate prediction launched under.

Instructions on how one can enhance on that baseline are given by latest publications. Weyn et al.(Weyn, Durran, and Caruana, n.d.), along with making use of
extra geometrically-adequate spatial preprocessing, use a U-Internet-based structure as an alternative of a plain convnet. Rasp and Thuerey
(Rasp and Thuerey 2020), constructing on a completely convolutional, high-capacity ResNet structure, add a key new procedural ingredient:
pre-training on local weather fashions. With their technique, they’re able to not simply compete with bodily fashions, but in addition, present
proof of the community studying about bodily construction and dependencies. Sadly, compute services of this order
usually are not out there to the typical particular person, which is why we’ll content material ourselves with demonstrating a easy toy mannequin.
Nonetheless, having seen a easy mannequin in motion, in addition to the kind of knowledge it really works on, ought to assist lots in understanding how
DL can be utilized for climate prediction.

Dataset

Weatherbench was explicitly created as a benchmark dataset and thus, as is
widespread for this species, hides a number of preprocessing and standardization effort from the person. Atmospheric knowledge can be found
on an hourly foundation, starting from 1979 to 2018, at completely different spatial resolutions. Relying on decision, there are about 15
to twenty measured variables, together with temperature, geopotential, wind pace, and humidity. Of those variables, some are
out there at a number of stress ranges. Thus, our instance makes use of a small subset of accessible “channels.” To avoid wasting storage,
community and computational assets, it additionally operates on the smallest out there decision.

This submit is accompanied by executable code on Google
Colaboratory
, which shouldn’t simply
render pointless any copy-pasting of code snippets but in addition, enable for uncomplicated modification and experimentation.

To learn in and extract the info, saved as NetCDF recordsdata, we use
tidync, a high-level package deal constructed on prime of
ncdf4 and RNetCDF. In any other case,
availability of the standard “TensorFlow household” in addition to a subset of tidyverse packages is assumed.

As already alluded to, our instance makes use of two spatio-temporal collection: 500hPa geopotential and 850hPa temperature. The
following instructions will obtain and unpack the respective units of by-year recordsdata, for a spatial decision of 5.625 levels:

obtain.file("https://dataserv.ub.tum.de/s/m1524895/obtain?path=%2F5.625degpercent2Ftemperature_850&recordsdata=temperature_850_5.625deg.zip",
              "temperature_850_5.625deg.zip")
unzip("temperature_850_5.625deg.zip", exdir = "temperature_850")

obtain.file("https://dataserv.ub.tum.de/s/m1524895/obtain?path=%2F5.625degpercent2Fgeopotential_500&recordsdata=geopotential_500_5.625deg.zip",
              "geopotential_500_5.625deg.zip")
unzip("geopotential_500_5.625deg.zip", exdir = "geopotential_500")

Inspecting a type of recordsdata’ contents, we see that its knowledge array is structured alongside three dimensions, longitude (64
completely different values), latitude (32) and time (8760). The information itself is z, the geopotential.

tidync("geopotential_500/geopotential_500hPa_2015_5.625deg.nc") %>% hyper_array()
Class: tidync_data (record of tidync knowledge arrays)
Variables (1): 'z'
Dimension (3): lon,lat,time (64, 32, 8760)
Supply: /[...]/geopotential_500/geopotential_500hPa_2015_5.625deg.nc

Extraction of the info array is as simple as telling tidync to learn the primary within the record of arrays:

z500_2015 <- (tidync("geopotential_500/geopotential_500hPa_2015_5.625deg.nc") %>%
                hyper_array())[[1]]

dim(z500_2015)
[1] 64 32 8760

Whereas we delegate additional introduction to tidync to a complete weblog
submit
on the ROpenSci web site, let’s at the very least have a look at a fast visualization, for
which we decide the very first time level. (Extraction and visualization code is analogous for 850hPa temperature.)

picture(z500_2015[ , , 1],
      col = hcl.colours(20, "viridis"), # for temperature, the colour scheme used is YlOrRd 
      xaxt = 'n',
      yaxt = 'n',
      predominant = "500hPa geopotential"
)

The maps present how stress and temperature strongly rely on latitude. Moreover, it’s simple to identify the atmospheric
waves
:


Spatial distribution of 500hPa geopotential and 850 hPa temperature for 2015/01/01 0:00h.

Determine 1: Spatial distribution of 500hPa geopotential and 850 hPa temperature for 2015/01/01 0:00h.

For coaching, validation and testing, we select consecutive years: 2015, 2016, and 2017, respectively.

z500_train <- (tidync("geopotential_500/geopotential_500hPa_2015_5.625deg.nc") %>% hyper_array())[[1]]

t850_train <- (tidync("temperature_850/temperature_850hPa_2015_5.625deg.nc") %>% hyper_array())[[1]]

z500_valid <- (tidync("geopotential_500/geopotential_500hPa_2016_5.625deg.nc") %>% hyper_array())[[1]]

t850_valid <- (tidync("temperature_850/temperature_850hPa_2016_5.625deg.nc") %>% hyper_array())[[1]]

z500_test <- (tidync("geopotential_500/geopotential_500hPa_2017_5.625deg.nc") %>% hyper_array())[[1]]

t850_test <- (tidync("temperature_850/temperature_850hPa_2017_5.625deg.nc") %>% hyper_array())[[1]]

Since geopotential and temperature might be handled as channels, we concatenate the corresponding arrays. To remodel the info
into the format wanted for pictures, a permutation is important:

train_all <- abind::abind(z500_train, t850_train, alongside = 4)
train_all <- aperm(train_all, perm = c(3, 2, 1, 4))
dim(train_all)
[1] 8760 32 64 2

All knowledge might be standardized based on imply and customary deviation as obtained from the coaching set:

level_means <- apply(train_all, 4, imply)
level_sds <- apply(train_all, 4, sd)

spherical(level_means, 2)
54124.91  274.8

In phrases, the imply geopotential top (see footnote 5 for extra on this time period), as measured at an isobaric floor of 500hPa,
quantities to about 5400 metres, whereas the imply temperature on the 850hPa degree approximates 275 Kelvin (about 2 levels
Celsius).

practice <- train_all
practice[, , , 1] <- (practice[, , , 1] - level_means[1]) / level_sds[1]
practice[, , , 2] <- (practice[, , , 2] - level_means[2]) / level_sds[2]

valid_all <- abind::abind(z500_valid, t850_valid, alongside = 4)
valid_all <- aperm(valid_all, perm = c(3, 2, 1, 4))

legitimate <- valid_all
legitimate[, , , 1] <- (legitimate[, , , 1] - level_means[1]) / level_sds[1]
legitimate[, , , 2] <- (legitimate[, , , 2] - level_means[2]) / level_sds[2]

test_all <- abind::abind(z500_test, t850_test, alongside = 4)
test_all <- aperm(test_all, perm = c(3, 2, 1, 4))

check <- test_all
check[, , , 1] <- (check[, , , 1] - level_means[1]) / level_sds[1]
check[, , , 2] <- (check[, , , 2] - level_means[2]) / level_sds[2]

We’ll try and predict three days forward.

Now all that is still to be performed is assemble the precise datasets.

batch_size <- 32

train_x <- practice %>%
  tensor_slices_dataset() %>%
  dataset_take(dim(practice)[1] - lead_time)

train_y <- practice %>%
  tensor_slices_dataset() %>%
  dataset_skip(lead_time)

train_ds <- zip_datasets(train_x, train_y) %>%
  dataset_shuffle(buffer_size = dim(practice)[1] - lead_time) %>%
  dataset_batch(batch_size = batch_size, drop_remainder = TRUE)

valid_x <- legitimate %>%
  tensor_slices_dataset() %>%
  dataset_take(dim(legitimate)[1] - lead_time)

valid_y <- legitimate %>%
  tensor_slices_dataset() %>%
  dataset_skip(lead_time)

valid_ds <- zip_datasets(valid_x, valid_y) %>%
  dataset_batch(batch_size = batch_size, drop_remainder = TRUE)

test_x <- check %>%
  tensor_slices_dataset() %>%
  dataset_take(dim(check)[1] - lead_time)

test_y <- check %>%
  tensor_slices_dataset() %>%
  dataset_skip(lead_time)

test_ds <- zip_datasets(test_x, test_y) %>%
  dataset_batch(batch_size = batch_size, drop_remainder = TRUE)

Let’s proceed to defining the mannequin.

Fundamental CNN with periodic convolutions

The mannequin is a simple convnet, with one exception: As a substitute of plain convolutions, it makes use of barely extra subtle
ones that “wrap round” longitudinally.

periodic_padding_2d <- perform(pad_width,
                                identify = NULL) {
  
  keras_model_custom(identify = identify, perform(self) {
    self$pad_width <- pad_width
    
    perform (x, masks = NULL) {
      x <- if (self$pad_width == 0) {
        x
      } else {
        lon_dim <- dim(x)[3]
        pad_width <- tf$forged(self$pad_width, tf$int32)
        # wrap round for longitude
        tf$concat(record(x[, ,-pad_width:lon_dim,],
                       x,
                       x[, , 1:pad_width,]),
                  axis = 2L) %>%
          tf$pad(record(
            record(0L, 0L),
            # zero-pad for latitude
            record(pad_width, pad_width),
            record(0L, 0L),
            record(0L, 0L)
          ))
      }
    }
  })
}

periodic_conv_2d <- perform(filters,
                             kernel_size,
                             identify = NULL) {
  
  keras_model_custom(identify = identify, perform(self) {
    self$padding <- periodic_padding_2d(pad_width = (kernel_size - 1) / 2)
    self$conv <-
      layer_conv_2d(filters = filters,
                    kernel_size = kernel_size,
                    padding = 'legitimate')
    
    perform (x, masks = NULL) {
      x %>% self$padding() %>% self$conv()
    }
  })
}

For our functions of creating a deep-learning baseline that’s quick to coach, CNN structure and parameter defaults are
chosen to be easy and average, respectively:

periodic_cnn <- perform(filters = c(64, 64, 64, 64, 2),
                         kernel_size = c(5, 5, 5, 5, 5),
                         dropout = rep(0.2, 5),
                         identify = NULL) {
  
  keras_model_custom(identify = identify, perform(self) {
    
    self$conv1 <-
      periodic_conv_2d(filters = filters[1], kernel_size = kernel_size[1])
    self$act1 <- layer_activation_leaky_relu()
    self$drop1 <- layer_dropout(price = dropout[1])
    self$conv2 <-
      periodic_conv_2d(filters = filters[2], kernel_size = kernel_size[2])
    self$act2 <- layer_activation_leaky_relu()
    self$drop2 <- layer_dropout(price =dropout[2])
    self$conv3 <-
      periodic_conv_2d(filters = filters[3], kernel_size = kernel_size[3])
    self$act3 <- layer_activation_leaky_relu()
    self$drop3 <- layer_dropout(price = dropout[3])
    self$conv4 <-
      periodic_conv_2d(filters = filters[4], kernel_size = kernel_size[4])
    self$act4 <- layer_activation_leaky_relu()
    self$drop4 <- layer_dropout(price = dropout[4])
    self$conv5 <-
      periodic_conv_2d(filters = filters[5], kernel_size = kernel_size[5])
    
    perform (x, masks = NULL) {
      x %>%
        self$conv1() %>%
        self$act1() %>%
        self$drop1() %>%
        self$conv2() %>%
        self$act2() %>%
        self$drop2() %>%
        self$conv3() %>%
        self$act3() %>%
        self$drop3() %>%
        self$conv4() %>%
        self$act4() %>%
        self$drop4() %>%
        self$conv5()
    }
  })
}

mannequin <- periodic_cnn()

Coaching

In that very same spirit of “default-ness,” we practice with MSE loss and Adam optimizer.

loss <- tf$keras$losses$MeanSquaredError(discount = tf$keras$losses$Discount$SUM)
optimizer <- optimizer_adam()

train_loss <- tf$keras$metrics$Imply(identify='train_loss')

valid_loss <- tf$keras$metrics$Imply(identify='test_loss')

train_step <- perform(train_batch) {

  with (tf$GradientTape() %as% tape, {
    predictions <- mannequin(train_batch[[1]])
    l <- loss(train_batch[[2]], predictions)
  })

  gradients <- tape$gradient(l, mannequin$trainable_variables)
  optimizer$apply_gradients(purrr::transpose(record(
    gradients, mannequin$trainable_variables
  )))

  train_loss(l)

}

valid_step <- perform(valid_batch) {
  predictions <- mannequin(valid_batch[[1]])
  l <- loss(valid_batch[[2]], predictions)
  
  valid_loss(l)
}

training_loop <- tf_function(autograph(perform(train_ds, valid_ds, epoch) {
  
  for (train_batch in train_ds) {
    train_step(train_batch)
  }
  
  for (valid_batch in valid_ds) {
    valid_step(valid_batch)
  }
  
  tf$print("MSE: practice: ", train_loss$outcome(), ", validation: ", valid_loss$outcome()) 
    
}))

Depicted graphically, we see that the mannequin trains nicely, however extrapolation doesn’t surpass a sure threshold (which is
reached early, after coaching for simply two epochs).


MSE per epoch on training and validation sets.

Determine 2: MSE per epoch on coaching and validation units.

This isn’t too stunning although, given the mannequin’s architectural simplicity and modest dimension.

Analysis

Right here, we first current two different baselines, which – given a extremely advanced and chaotic system just like the environment – might
sound irritatingly easy and but, be fairly exhausting to beat. The metric used for comparability is latitudinally weighted
root-mean-square error
. Latitudinal weighting up-weights the decrease latitudes and down-weights the higher ones.

deg2rad <- perform(d) {
  (d / 180) * pi
}

lats <- tidync("geopotential_500/geopotential_500hPa_2015_5.625deg.nc")$transforms$lat %>%
  choose(lat) %>%
  pull()

lat_weights <- cos(deg2rad(lats))
lat_weights <- lat_weights / imply(lat_weights)

weighted_rmse <- perform(forecast, ground_truth) {
  error <- (forecast - ground_truth) ^ 2
  for (i in seq_along(lat_weights)) {
    error[, i, ,] <- error[, i, ,] * lat_weights[i]
  }
  apply(error, 4, imply) %>% sqrt()
}

Baseline 1: Weekly climatology

Typically, climatology refers to long-term averages computed over outlined time ranges. Right here, we first calculate weekly
averages primarily based on the coaching set. These averages are then used to forecast the variables in query for the time interval
used as check set.

The 1st step makes use of tidync, ncmeta, RNetCDF and lubridate to compute weekly averages for 2015, following the ISO
week date system
.

train_file <- "geopotential_500/geopotential_500hPa_2015_5.625deg.nc"

times_train <- (tidync(train_file) %>% activate("D2") %>% hyper_array())$time

time_unit_train <- ncmeta::nc_atts(train_file, "time") %>%
  tidyr::unnest(cols = c(worth)) %>%
  dplyr::filter(identify == "models")

time_parts_train <- RNetCDF::utcal.nc(time_unit_train$worth, times_train)

iso_train <- ISOdate(
  time_parts_train[, "year"],
  time_parts_train[, "month"],
  time_parts_train[, "day"],
  time_parts_train[, "hour"],
  time_parts_train[, "minute"],
  time_parts_train[, "second"]
)

isoweeks_train <- map(iso_train, isoweek) %>% unlist()

train_by_week <- apply(train_all, c(2, 3, 4), perform(x) {
  tapply(x, isoweeks_train, perform(y) {
    imply(y)
  })
})

dim(train_by_week)
53 32 64 2

Step two then runs by the check set, mapping dates to corresponding ISO weeks and associating the weekly averages from the
coaching set:

test_file <- "geopotential_500/geopotential_500hPa_2017_5.625deg.nc"

times_test <- (tidync(test_file) %>% activate("D2") %>% hyper_array())$time

time_unit_test <- ncmeta::nc_atts(test_file, "time") %>%
  tidyr::unnest(cols = c(worth)) %>%
  dplyr::filter(identify == "models")

time_parts_test <- RNetCDF::utcal.nc(time_unit_test$worth, times_test)

iso_test <- ISOdate(
  time_parts_test[, "year"],
  time_parts_test[, "month"],
  time_parts_test[, "day"],
  time_parts_test[, "hour"],
  time_parts_test[, "minute"],
  time_parts_test[, "second"]
)

isoweeks_test <- map(iso_test, isoweek) %>% unlist()

climatology_forecast <- test_all

for (i in 1:dim(climatology_forecast)[1]) {
  week <- isoweeks_test[i]
  lookup <- train_by_week[week, , , ]
  climatology_forecast[i, , ,] <- lookup
}

For this baseline, the latitudinally-weighted RMSE quantities to roughly 975 for geopotential and 4 for temperature.

wrmse <- weighted_rmse(climatology_forecast, test_all)
spherical(wrmse, 2)
974.50   4.09

Baseline 2: Persistence forecast

The second baseline generally used makes an easy assumption: Tomorrow’s climate is at the moment’s climate, or, in our case:
In three days, issues might be similar to they’re now.

Computation for this metric is sort of a one-liner. And because it seems, for the given lead time (three days), efficiency is
not too dissimilar from obtained via weekly climatology:

persistence_forecast <- test_all[1:(dim(test_all)[1] - lead_time), , ,]

test_period <- test_all[(lead_time + 1):dim(test_all)[1], , ,]

wrmse <- weighted_rmse(persistence_forecast, test_period)

spherical(wrmse, 2)
937.55  4.31

Baseline 3: Easy convnet

How does the easy deep studying mannequin stack up in opposition to these two?

To reply that query, we first must receive predictions on the check set.

test_wrmses <- knowledge.body()

test_loss <- tf$keras$metrics$Imply(identify = 'test_loss')

test_step <- perform(test_batch, batch_index) {
  predictions <- mannequin(test_batch[[1]])
  l <- loss(test_batch[[2]], predictions)
  
  predictions <- predictions %>% as.array()
  predictions[, , , 1] <- predictions[, , , 1] * level_sds[1] + level_means[1]
  predictions[, , , 2] <- predictions[, , , 2] * level_sds[2] + level_means[2]
  
  wrmse <- weighted_rmse(predictions, test_all[batch_index:(batch_index + 31), , ,])
  test_wrmses <<- test_wrmses %>% bind_rows(c(z = wrmse[1], temp = wrmse[2]))

  test_loss(l)
}

test_iterator <- as_iterator(test_ds)

batch_index <- 0
whereas (TRUE) {
  test_batch <- test_iterator %>% iter_next()
  if (is.null(test_batch))
    break
  batch_index <- batch_index + 1
  test_step(test_batch, as.integer(batch_index))
}

test_loss$outcome() %>% as.numeric()
3821.016

Thus, common loss on the check set parallels that seen on the validation set. As to latitudinally weighted RMSE, it seems
to be greater for the DL baseline than for the opposite two:

      z    temp 
1521.47    7.70 

Conclusion

At first look, seeing the DL baseline carry out worse than the others may really feel anticlimactic. But when you consider it,
there isn’t a have to be disillusioned.

For one, given the large complexity of the duty, these heuristics usually are not as simple to outsmart. Take persistence: Relying
on lead time – how far into the long run we’re forecasting – the wisest guess may very well be that every little thing will keep the
similar. What would you guess the climate will appear to be in 5 minutes? — Identical with weekly climatology: Wanting again at how
heat it was, at a given location, that very same week two years in the past, doesn’t basically sound like a foul technique.

Second, the DL baseline proven is as primary as it may well get, architecture- in addition to parameter-wise. Extra subtle and
highly effective architectures have been developed that not simply by far surpass the baselines, however may even compete with bodily
fashions (cf. particularly Rasp and Thuerey (Rasp and Thuerey 2020) already talked about above). Sadly, fashions like that have to be
educated on lots of knowledge.

Nevertheless, different weather-related functions (aside from medium-range forecasting, that’s) could also be extra in attain for
people within the subject. For these, we hope we’ve got given a helpful introduction. Thanks for studying!

Rasp, Stephan, Peter D. Dueben, Sebastian Scher, Jonathan A. Weyn, Soukayna Mouatadid, and Nils Thuerey. 2020. WeatherBench: A benchmark dataset for data-driven climate forecasting.” arXiv e-Prints, February, arXiv:2002.00469. https://arxiv.org/abs/2002.00469.
Rasp, Stephan, and Nils Thuerey. 2020. “Purely Knowledge-Pushed Medium-Vary Climate Forecasting Achieves Comparable Talent to Bodily Fashions at Comparable Decision.” https://arxiv.org/abs/2008.08626.
Weyn, Jonathan A., Dale R. Durran, and Wealthy Caruana. n.d. “Enhancing Knowledge-Pushed International Climate Prediction Utilizing Deep Convolutional Neural Networks on a Cubed Sphere.” Journal of Advances in Modeling Earth Programs n/a (n/a): e2020MS002109. https://doi.org/10.1029/2020MS002109.

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