diff --git a/docs/Users_Guide/statistics_list.rst b/docs/Users_Guide/statistics_list.rst
index 320c570334..537c3063fc 100644
--- a/docs/Users_Guide/statistics_list.rst
+++ b/docs/Users_Guide/statistics_list.rst
@@ -2295,7 +2295,7 @@ ____________________
Use Case
- n/a
* - Spatial distance between :raw-html:`
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- (𝑥,𝑦)(x,y) coordinates of :raw-html:`
`
+ :math:`(x,y)` coordinates of :raw-html:`
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object spacetime centroid
- SPACE :raw-html:`
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_CENTROID :raw-html:`
`
diff --git a/docs/use_cases/model_applications/short_range/GenEnsProd_fcstHRRR_fcstOnly_SurrogateSevere.py b/docs/use_cases/model_applications/short_range/GenEnsProd_fcstHRRR_fcstOnly_SurrogateSevere.py
index c638b039d8..e7e0407072 100644
--- a/docs/use_cases/model_applications/short_range/GenEnsProd_fcstHRRR_fcstOnly_SurrogateSevere.py
+++ b/docs/use_cases/model_applications/short_range/GenEnsProd_fcstHRRR_fcstOnly_SurrogateSevere.py
@@ -13,12 +13,14 @@
# --------------------
#
# Run PCPCombine, GenEnsProd, and RegridDataPlane tools to create surrogate severe probability
-# forecasts (SSPFs) for a given date. SSPFs are a severe weather forecasting tool and is a techniqu
-# used by the Storm Prediction Center (SPC) as well as others. SSPFs are based on updraft helicity
-# (UH; UH = ∫z0 to zt (ω * ζ) dz) since certain thresholds of UH have been shown as good proxies for# severe weather. SSPFs can be thought of as the perfect model forecast. They are derived as follows:
+# forecasts (SSPFs) for a given date. SSPFs are a severe weather forecasting tool and is a technique
+# used by the Storm Prediction Center (SPC) as well as others. SSPFs are based on updraft helicity
+# (UH; :math:`\text{UH} = \int_{z_0}^{z_t} ( \omega * \zeta ) dz`) since certain thresholds of UH
+# have been shown as good proxies for severe weather. SSPFs can be thought of as the perfect model
+# forecast. They are derived as follows:
#
# 1. Regrid the maximum UH value over the 2-5km layer at each grid point to the NCEP 211 grid (dx = ~80km).
-# 2. Create a binary mask of points that meet a given threshold of UH)
+# 2. Create a binary mask of points that meet a given threshold of UH.
# 3. Convert the binary mask into a probability field by applying a Gaussian filter.
#
# For more information, please reference Sobash et al. 2011 (https://journals.ametsoc.org/doi/full/10.1175/WAF-D-10-05046.1).