Missouri Dams

5,380 dams tracked by the National Inventory of Dams

Total Dams

5,380

High Hazard

1,476

27.4%

Poor / Unsatisfactory

49

Average Age

51 yrs

Hazard Classification

High1,476 (27.4%)
Significant183 (3.4%)
Low3,721 (69.2%)

Condition Assessment

Satisfactory645 (12.0%)
Fair6 (0.1%)
Poor / Unsatisfactory49 (0.9%)
Not Rated4,680 (87.0%)

Federal

56

State

131

Local

1,298

Private

3,879

All Dams in Missouri

Showing 601625 of 1,476

Dam NameHeight (ft)YearHazardCondition
Kelley Lake Dam

Butler County

251968HighNot Rated
Kelly Enterprises Lake Dam

Mercer County

20HighNot Rated
Kelly Lake Dam

Montgomery County

301953HighNot Rated
Kemp Lake Dam

Crawford County

221937HighNot Rated
Kenny Lake Dam

Montgomery County

211965HighNot Rated
Kernodle Lake Dam #1

Jackson County

281967HighNot Rated
Kernodle Lake Dam #2

Jackson County

291954HighNot Rated
Kernodle Lake Dam Number Four

Jackson County

321932HighNot Rated
Kernoodle Lake Dam Number Three

Jackson County

201932HighNot Rated
Kertz Farms Lake Dam

Ste. Genevieve County

251957HighNot Rated
Kesterson Dam

Johnson County

251949HighNot Rated
Keuss Dam

Washington County

451999HighSatisfactory
Keyes Branch Mine Dam

Washington County

771979HighSatisfactory
Key Harbour Estate Dam #1

St. Charles County

441992HighSatisfactory
Key Harbour Estate Dam #2

St. Charles County

411992HighSatisfactory
Khani Dam

St. Charles County

572001HighUnsatisfactory
King Arthur'S Dam

Washington County

801980HighSatisfactory
King City New Reservoir Dam

Gentry County

341956HighNot Rated
King Lake Dam

DeKalb County

401971HighSatisfactory
Kingston No. 1 Dam

Washington County

851967HighSatisfactory
Kinnippi Lake Dam

Jefferson County

271960HighNot Rated
Kirby Dam

Ripley County

301974HighNot Rated
Kircher P D Dam

Cass County

231974HighNot Rated
Kirkpatrick Lake Dam

Washington County

201991HighNot Rated
Kisco Dam

Ste. Genevieve County

34HighNot Rated
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Data sourced from the National Inventory of Dams (NID). Hazard classification reflects potential consequences of failure, not the likelihood of failure.