
How Moscow might respond if Trump stops Russian oil to India
India, the world's third largest oil importer, has become the biggest buyer of Russian oil since 2022, purchasing up to 2 million barrels per day of oil accounting for 2% of global supply. Other top buyers are China and Turkey.
The Indian route is so important for the Kremlin that if disrupted it could prompt it to retaliate by closing the CPC pipeline from Kazakhstan, where U.S. oil majors Chevron and Exxon hold big stakes, analysts at JP Morgan said this week.
"Russia is not without leverage," the U.S. bank said.
Trump has threatened to slap tariffs of up to 100% on countries that buy Russian oil unless Moscow reaches a peace deal with Ukraine by August 7-9. A 25% tariff on all U.S. goods imports from India starts on Friday.
Reuters reported on Thursday that Indian state refineries had paused purchases of Russian oil this week amid Trump's threats.
India only began buying large quantities of oil from Russia, the world's second largest oil exporter, since 2022. It became a top importer after Europe, Russia's former top client, imposed a ban on Russian oil over its military actions in Ukraine. Russia's oil giant Rosneft has a major stake in one of India's biggest oil refineries.
India is now 35% reliant on Russian oil imports worth $50.2 billion in the 2024-25 fiscal year, according to India's government data.
"Cutting off this flow would require a massive realignment of trade flows," said Aldo Spanjer from BNP Paribas, adding that the global supply was already stretched.
India buys all varieties and grades of Russian oil - including Urals from Western ports, ESPO and Sokol from the Pacific and some grades from the Arctic, according to LSEG data.
Urals would be hit hardest if India stops buying as it purchases up to 70% of Russia's biggest export grade by volume. India's oil minister said the country can find alternative supply.
India would need to raise imports of U.S. and Middle Eastern crude or cut refining runs, leading to a spike in diesel prices, especially in Europe, which imports fuel from India.
"Indian refiners will still struggle to replace the heavy quality of Russian crude so they may end up paring runs," said Neil Crosby from Sparta Commodities.
Russia has managed to continue selling oil since 2022 despite international sanctions, although it sells it at discounts to global prices.
Falling global prices mean Russia's income is already under pressure. Its oil and gas revenue fell 33.7% year-on-year in June to its lowest since January 2023, finance ministry data showed. Revenues will fall 37% in July due to weaker global oil prices and a strong rouble, Reuters calculations show.
Russian firms will need to store oil on tankers if India stops buying, paying extra money for shipping charges and being forced to offer wide discounts to new buyers, traders said.
A loss of 2 million bpd of exports might also gradually prompt Russia to start reducing oil production from the current levels of 9 million bpd, traders said. Russia's current production is regulated by OPEC+ quotas.
Russia could potentially divert some 0.8 million bpd of oil to Egypt, Malaysia, Pakistan, Peru, Brunei, South Africa and Indonesia, JP Morgan said.
Moscow could also disrupt the CPC pipeline to make sure the West feels the pain from higher oil prices. Western oil firms Exxon, Chevron, Shell, ENI and TotalEnergies ship up to 1 million bpd via CPC, which has total capacity of 1.7 million bpd.
"If we get a visible and substantial difficulty in clearing Russian crude and Putin shuts off CPC, oil prices might get well over $80 per barrel, possibly a lot more," said Crosby.
The CPC pipeline crosses Russian territory and the consortium has clashed with Moscow, which ordered it to suspend operations for several days in 2022 and 2025 citing environmental and tanker regulations.
A combined stoppage of CPC and Russian flows to India would create a disruption of 3.5 million bpd or 3.5% of global supply.
"The Trump administration, like its predecessors, will likely find sanctioning the world's second-largest oil exporter unfeasible without spiking oil prices," JP Morgan said.
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