The company also announced a new US$1 billion three year term loan agreement. These actions further strengthen the company’s cash position and financial liquidity in response to the sharp decline in oil prices.
“With 80% of our oil production hedged in 2020, our significantly reduced capital and exploratory budget and our new three year loan agreement, our company is well positioned for this low price environment,” CEO John Hess said. “Our focus is on preserving cash and protecting our world class investment opportunity in Guyana.”
The reductions to the company’s 2020 capital budget will be primarily achieved by shifting from a six rig programme to one rig in the Bakken, which is expected to be completed by the end of May. Most discretionary exploration and offshore drilling activities, excluding Guyana, will also be deferred.
On 16 March 2020, the company entered into a US$1 billion three year term loan agreement with JPMorgan Chase Bank, N.A. The term loan contains provisions that require the company to reduce JPMorgan’s initial funded amount, which the company intends to do by syndicating the loan to other banks.
In 2020, approximately 80% of the company’s oil production is hedged by put options, with 130 000 bpd at US$55/bbl West Texas Intermediate put options and 20,000 barrels a day at US$60/bbl Brent put options. In addition, the company entered 2020 with more than US$1.5 billion in cash and cash equivalents on its balance sheet and has a US$3.5 billion undrawn revolving credit facility and no material debt maturities until 2027.
Net production for 2020 is now forecast to average between 325 000 and 330 000 boe/d, excluding Libya, versus previous guidance of between 330 000 and 335 000 boe/d. The company’s Bakken net production is forecast to average approximately 175 000 boe/d in 2020, versus previous guidance of approximately 180 000 boe/d.
Read the article online at: https://www.oilfieldtechnology.com/drilling-and-production/17032020/hess-downsizes-2020-capital-and-exploratory-budget/
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